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Copyright © 2009 by The American Society for Cell Biology Endocytic Accessory Proteins Are Functionally Distinguished by Their Differential Effects on the Maturation of Clathrin-coated Pits Department of Cell Biology, The Scripps Research Institute, La Jolla, CA 92037 Sandra Lemmon, Monitoring Editor Corresponding author.Address correspondence to: Sandra L. Schmid (Email: slschmid/at/scripps.edu) * These authors contributed equally to this work.Contributed by Author contributions: M.S., C.A., and M.M. performed all the cell biological, biochemical, and microscopic assays; D.L. designed and wrote the lifetime analysis software; M.M., M.S., and D.L. carried out data processing; S.L.S. and G.D. provided experimental design and assistance in interpretation; M.M. prepared the figures; M.M., M.S., D.L., G.D., and S.L.S. wrote the manuscript. † Present address: ETH, Institute for Biochemistry, Schafmattstraße, 18, 8093 Zurich, Switzerland.Received March 31, 2009; Revised May 8, 2009; Accepted May 12, 2009. Abstract Diverse cargo molecules (i.e., receptors and ligand/receptor complexes) are taken into the cell by clathrin-mediated endocytosis (CME) utilizing a core machinery consisting of cargo-specific adaptors, clathrin and the GTPase dynamin. Numerous endocytic accessory proteins are also required, but their differential roles and functional hierarchy during CME are not yet understood. Here, we used a combination of quantitative live-cell imaging by total internal reflection fluorescence microscopy (TIR-FM), and decomposition of the lifetime distributions of clathrin-coated pits (CCPs) to measure independent aspects of CCP dynamics, including the turnover of abortive and productive CCP species and their relative contributions. Capitalizing on the sensitivity of this assay, we have examined the effects of specific siRNA-mediated depletion of endocytic accessory proteins on CME progression. Of the 12 endocytic accessory proteins examined, we observed seven qualitatively different phenotypes upon protein depletion. From this data we derive a temporal hierarchy of protein function during early steps of CME. Our results support the idea that a subset of accessory proteins, which mediate coat assembly, membrane curvature, and cargo selection, can provide input into an endocytic restriction point/checkpoint mechanism that monitors CCP maturation. INTRODUCTION Clathrin-mediated endocytosis (CME) proceeds through the sequential stages of 1) clathrin nucleation at the membrane, 2) clathrin-coated pit (CCP) maturation and invagination, 3) CCP scission, and 4) vesicle uncoating (Conner and Schmid, 2003 ). The core components of the CME machinery, namely clathrin, the tetrameric adaptor protein AP-2, and the large GTPase dynamin, are assisted by numerous endocytic accessory proteins throughout all stages of CCP maturation (Schmid and McMahon, 2007 ). Although the function of the core components of the CME machinery is increasingly well understood, the exact function of most other endocytic accessory proteins remains unknown. Among these factors, some such as CALM, epsin1, and SNX9 recognize specific subclasses of cargo molecules (Howard et al., 1999 ; Harel et al., 2008 ; Kazazic et al., 2009 ). Others, such as intersectin, Eps15, SNX9, and endophilin have multiple protein-interaction domains (e.g., Eps15-homolgy [EH] or Src-homology 3 [SH3] domains) and are thought to have scaffolding functions (Miliaras and Wendland, 2004 ; Ungewickell and Hinrichsen, 2007 ). Endophilin, SNX9, and epsin have lipid curvature sensing and/or generating domains (e.g., BAR or ENTH domains) and are thought to regulate CME by introducing local biochemical and physical changes into the lipid bilayer, i.e., membrane curvature (Ford et al., 2002 ; Itoh and De Camilli, 2006 ). Finally, Hip1R, SNX9, and intersectin are thought to link CME to the actin cytoskeleton and actin dynamics (McPherson, 2002 ; Le Clainche et al., 2007 ; Yarar et al., 2007 ). How these diverse and partially redundant components of the endocytic machinery are integrated and function to create a robust mechanism for CCP initiation and maturation is unclear.Biochemical assays have shown that overexpression or small interfering RNA (siRNA) knockdown of the various endocytic accessory proteins inhibit, to varying degrees, the overall rate of CME, typically assessed by internalization of transferrin (Huang et al., 2004 ; Engqvist-Goldstein et al., 2004 ; Soulet et al., 2005 ). However, these quantitative differences in the requirements of the various accessory factors for the overall efficiency of CME provide little insight into how the factors might differ qualitatively in their function and whether they act at different stages during CCP maturation. Moreover, siRNA knockdown of some accessory proteins showed only moderate or no effects on CME, making conclusions regarding their function difficult and ambiguous. More sensitive in vivo assays are needed to detect milder phenotypes due to incomplete knockdown and/or partial redundancy in protein function. Together with a higher temporal resolution to resolve early stages of CCP maturation, these assays could provide better insight into the differential roles of these endocytic accessory proteins in CME.Several studies have used microscopy-based assays and fluorescently tagged proteins to dissect the spatiotemporal organization of single CCPs in living cells (Merrifield et al., 2002 ; Kaksonen et al., 2003 ; Soulet et al., 2005 ; Rappoport et al., 2008 ). This approach has been especially successful when combined with genetic knockout studies in yeast (Kaksonen et al., 2003 , 2005 ; Rappoport et al., 2008 ). Because individual endocytic events in yeast occur in a relatively invariant, stereotypical manner, these analyses have enabled the clustering of endocytic accessory factors into temporally and functionally distinct subsets. In contrast, fluorescent studies on CME in mammalian cells have revealed significant dynamic heterogeneity (Gaidarov et al., 1999 ; Merrifield et al., 2002 ; Keyel et al., 2004 ; Yarar et al., 2008 ; Loerke et al., 2009 ). We have recently developed methods that exploit this dynamic heterogeneity to gain insight into the function of various endocytic components in the CCP maturation process. By decomposition of the measured CCP lifetime distributions, we identified three kinetically distinct subpopulations: two short-lived abortive populations and a longer-lived productive population (Loerke et al., 2009 ). Manipulation of cargo and adaptor protein concentration and analysis of dynamin mutants suggested that CCP maturation is gated by an “endocytic restriction/checkpoint”, which is sensitive to cargo loading and regulated by dynamin. The finding that our manipulations differentially affected either the fraction of the three CCP subpopulations or their lifetimes indicated that these are independent parameters that can be measured to establish a functional hierarchy of CME factors. For example, perturbations that increase the lifetimes of productive CCPs and/or decrease their fractional contribution are likely to be limiting components for CCP maturation. In contrast, factors that are sensed by the endocytic restriction/checkpoint apparatus would be expected to affect the rate of turnover of abortive CCPs.Here, we use this assay to identify the differential effects of siRNA-repressed expression levels of 10 endocytic accessory proteins: SNX9, epsin1, Hip1R, Eps15, intersectin2, CALM, endophilin, GAK, and clathrin light chain a and b (LCa and LCb, respectively). Our data provide new insight into the regulatory roles of these accessory proteins in clathrin-coated vesicle (CCV) formation. MATERIALS AND METHODS Cell Lines and Cell Culture Epithelial BSC1 monkey kidney cells stably expressing rat brain clathrin LCa fused to enhanced green fluorescent protein (LCa-EGFP) or the AP-2 rat brain σ2-adaptin fused to EGFP were kindly provided by Dr. T. Kirchhausen (Harvard Medical School). Cells were grown under 5% CO2 at 37°C in DMEM supplemented with 20 mM HEPES, 10 μg/ml streptomycin, 66 μg/ml penicillin, 10% (vol/vol) fetal calf serum (FCS, Hyclone, Logan, UT) and 0.5 mg/ml geneticin (Invitrogen, Carlsbad, CA). siRNA and Transfection siRNA duplexes (Dharmacon Research, Boulder, CO, and Invitrogen) were 1) chosen according to published sequences, 2) derived from a Dharmacon “ON-TARGET plus Set of 4”, or 3) personally designed by using the online Stealth siRNA Designer (https://rnaidesigner.invitrogen.com/rnaiexpress/). The following sequences were used: endophilin: GCA CAU UGU CAA AGG UCA ATT (Wang et al., 2003 ); epsin1: GAU CAA GGU UCG AGA GGC CTT (Dharmacon “Set of 4”); Eps15: UUG ACC UUU GAC AAU GUG CTT (Huang et al., 2004 ); GAK: GCG ACA CGG UUC UGA AGA UTT (Dharmacon “Set of 4”); Hip1R: UGG CUG ACC UCU UCG AUC AUU (Dharmacon “Set of 4”); SNX9: AGA GCU ACA UCG AAU AUC ATT (Yarar et al., 2007 ); CLCa: GCA GAA GAA GCC UUU GUA ATT (Huang et al., 2004 ); CLCb: GGA ACC AGC GCC AGA GUG AUU (Huang et al., 2004 ); CALM: AAG GAT AAA AGT GGA TTG CAA (Qiagen, Chatsworth, CA); and intersectin2: AAC GTA AAG CCC AGA AAG AAA (Qiagen).The day before transfection, 8 × 104 BSC1 cells were plated in a 60-mm Petri dish. On day 1 and day 3, cells were washed with Opti-MEM (Invitrogen) and transfected using 50 nM siRNA and 12 μl HiPerFect transfection reagent (Qiagen) in a total volume of 2 ml Opti-MEM, according to the manufacturer's recommendations. After a 5-h incubation, cells were washed with culture medium and split if necessary. Cells were analyzed by Western blot or total internal reflection fluorescence microscopy (TIR-FM) 72 h after the first transfection. SDS-PAGE and Western Blot To detect levels of specific protein depletion after siRNA treatment, cells were lysed (50 mM Tris-base, 2 mM EGTA, 150 mM NaCl, 1% Nonidet P40, 10 mM NaF, 2 mM Na-vanadate, 0.25% deoxycholic acid, Complete protease inhibitor [Roche, Indianapolis, IN], pH 7.4) and sonicated, and remaining cell debris was spun down. Total protein concentration was determined, and equal amounts of cell lysates were separated using SDS-PAGE (10 or 12% gels), transferred to a nitrocellulose membrane (Whatman, Clifton, NJ), blocked for 1 h at room temperature in Western blot buffer (20 mM Tris-Base, 15 mM NaCl, 5 mM EDTA, and 0.5% Tween-20, pH 7.4), supplemented with 5% skim milk, and incubated with primary antibodies overnight (anti-actin, Chemicon International, Temecula, CA; endophilin2, kindly provided by Prof. P. De Camilli (Yale University School of Medicine); epsin1, Eps15, CLCs, CALM, and Snx9, from the Schmid lab; GAK, Medical & Biological Laboratories, Nagoya, Japan; Hip1R, kindly provided by Prof. D. Drubin (University of California, Berkeley); intersectin, Novus Biologicals, Littleton, CO; and dynamin3, Abcam, Cambridge, MA, [which recognizes a 100-kDa nonspecific band that serves as a loading control, referred to as Ab-Cam antigen]). The blots were revealed by HRP-labeled secondary antibodies and enhanced chemiluminescence. For a rigorous quantification, chemiluminescent blots were analyzed by an Alpha Innotech FluorChem SP image station and the values for respective silencing efficiency were obtained using ImageJ (NIH; http://rsb.info.nih.gov/ij/) image analysis software. The protein band intensity of the silenced protein was normalized to the respective loading control (actin or the Ab-Cam antigen), averaged among the different lysate dilutions and, in order to obtain the percentage of silencing, compared with the expression levels in control cells that were treated with nonrelated siRNA. Live Cell Imaging by TIR-FM Cells were prepared for TIR-FM as previously described (Loerke et al., 2009 ). In brief: the day before imaging, 80,000 BSC1 cells were seeded per well in six-well plates containing a 22 × 22-mm glass coverslip. The next day, cells were washed three times with PBS, incubated with imaging medium, and mounted on coverslips. For imaging, the cells were rapidly transferred to a prewarmed microscope stage (37°C; controlled with a custom-modified stage incubator), and four to seven cells were imaged per coverslip. TIR-FM movies of BSC1 cells stably expressing LCa-EGFP or σ2-EGFP were acquired in fast (frame rate, 400 ms; exposure time, 90 ms) and slow (frame rate, 2 s; exposure time, 200 ms) acquisition mode during 10 min, using a 100× 1.45 NA objective (Nikon, Melville, NY) mounted on a Nikon TE2000U inverted microscope (Nikon, Melville, NY) and a 14-bit mode-operated Hamamatsu Orca II-ERG camera (Hamamatsu Photonics, Hamamatsu City, Japan). For every silencing condition, at least 18 movies of different cells from a minimum of three independent silencing experiments were recorded. Movies of control cells treated with nonrelevant siRNA were routinely recorded in parallel with experimental conditions. For acquisition of epifluorescence (EPI)-TIR-FM movies upon GAK depletion, pairs of EPI- and TIR-FM images (exposure times, 200 ms) were acquired sequentially for 10 min, with 2-s intervals between pairs and 30–0ms delay between EPI and TIR-FM acquisition.Automated Image and CCP Lifetime Analysis Fluorescent particle detection and life-time tracking of CCPs in the TIR-FM movies was accomplished using the software package described in (Jaqaman et al., 2008 ). The lifetime analysis of CCPs was performed according to previous studies (Loerke et al., 2009 ).Statistical Analyses Significant subpopulations were identified by minimization of the value of the Bayesian information criterion (BIC) as described in (Loerke et al., 2009 ). The lifetime decomposition yields time constants [ô1, ô2, …, ôn] and contributions [c1, c2, …, cn] of the (generally three) CCP subpopulations and the contribution cp of the persistent population; these parameters are calculated by fitting the lifetime histogram, pooled from multiple cells, to the appropriate number of (Weibull-shaped) distributions.It is not completely straightforward to define a meaningful error for the parameters. The simplest approach for calculating a meaningful cell-to-cell error Δq for each of the parameters q would be to fit the lifetime histograms of each cell individually, and to then calculate Δq as the SD of the resulting distribution of parameters. However, in our case a minimum of two movies (one fast, one slow) is required to construct one complete histogram suitable for data fitting. Furthermore, as discussed in (Loerke et al., 2009 ) many more cells and an n >5000 are required to guarantee stable convergence of the model selection step. Therefore, we use the jackknife method for error determination (Thomson and Chave, 1991 ), a special case of a bootstrap assay. If q is the parameter of interest (e.g., the time constant of population 2), all is the estimate using all observations, and i is the estimate using all observations except i, i.e., the parameter is calculated by fitting the lifetime histogram pooled from all movies except movie i.The jackknife variance
all. Moreover, the distribution of the jackknifed parameter estimation approximates a normal distribution because of the central limit theorem. As a result, the p-value of the difference of a certain parameter between two conditions can be assayed by a t test approach, as follows:The means and jackknife-estimated variances of the parameter in condition one and two are [ 1, 2] and [var1, var2]; the sample sizes (number of cells/movies) in the two conditions are [n1, n2].The SE for unequal sample size and unequal variance is
1 − 2)/S12, and the relevant degrees of freedom are (as the most conservative estimate) d = min[(n1 − 1), (n1 − 1)].Thus, the p-value for this t-statistic and for the specified degrees of freedom is defined as one minus the integral of the probability density function of the t-distribution between [−t, t]. RESULTS Using epithelial BSC1 cells stably expressing EGFP-tagged clathrin light chain (LCa-EGFP; Ehrlich et al., 2004 ), we recorded time-lapse movies of fluorescently labeled CCPs by TIR-FM. CCP trajectories were obtained using automated particle tracking (Jaqaman et al., 2008 ). As described previously (Loerke et al., 2009 ), we then applied statistical model selection to decompose the lifetime distribution of the entire tracked population into subpopulations with distinct lifetimes. When applied to the distribution of CCPs in control cells (100,823 CCP trajectories pooled from 65 different cells), the model selection identified three significant CCP subpopulations (Figure 1 ). Accordingly, we designated the subpopulations as early abortive, late abortive, and productive CCPs. As shown in Figure 1 ) to the total number of CCPs found at the plasma membrane, with early and late abortive CCPs representing 32.0 ± 1.1 and 18.6 ± 1.5%, respectively. The remaining CCPs (1.6 ± 0.1%) were designated “persistent,” because they failed to turnover for the duration of the 10-min movies (Supplementary Figure S1A). The measured time constants were 5.7 ± 0.2 and 18.5 ± 1.3 s for early and late abortive CCPs, respectively, whereas the longer-lived, productive subpopulation was characterized by a time constant of 62.4 ± 2.2 s (Figure 1
Compared with previous analysis of the same cell system (Loerke et al., 2009 ), the relative contribution and the mean lifetimes of productive CCPs increased and decreased, respectively, suggesting an overall increase in the efficiency of CME in this new set of experiments. These changes are likely to reflect differences in cell culture conditions and/or a clonal cell population. Thus, we were careful to perform control experiments in parallel with each perturbation condition, so that the values reported here were reproducible and consistent from experiment to experiment and from cell to cell.Using this assay, we previously showed that siRNA depletion of two core components of the endocytic machinery, AP-2 and dynamin, had dramatically different effects on CCP dynamics. AP-2 depletion (by 50%) reduced the total number of CCPs without affecting either the proportion or the lifetimes of the three subpopulations (Loerke et al., 2009 ). In contrast, siRNA depletion of dynamin (by ~70%) had no effect on the number of CCPs or on the proportion of abortive versus productive CCPs, but increased the lifetimes of both abortive and productive subpopulations. These differential phenotypes are consistent with the well-established role for AP-2 as a critical and limiting structural component required to initiate CCP assembly and with a role for dynamin in regulating CCP maturation. To better define the distinct functions of the less well-studied endocytic accessory factors, we examined the effects of their knockdown on the distinct aspects of CCP dynamics.Early and Late Stages of CCP Maturation Are Affected by Depletion of SNX9, CALM, or Epsin SNX9 is an SH3 domain– and BAR domain–containing protein that interacts with dynamin and promotes its GTPase activity (Soulet et al., 2005 ; Lundmark and Carlsson, 2009 ). In vivo studies have shown a concomitant burst of SNX9 and dynamin recruitment to CCPs during late stages of CCV formation (Soulet et al., 2005 ). As a member of the sorting nexin family, SNX9 has also been shown to interact with different cell surface transmembrane proteins and may play a role in directing their endocytosis (Howard et al., 1999 ). CALM is the nonneuronal homologue of AP180 (Assembly Protein 180 kDa) and functions in coat assembly and in recognition of v-SNAREs, a specialized cargo component of CCVs, through its ANTH domain (Harel et al., 2008 ). Finally, epsin1 is an EH domain–binding partner that interacts with both Eps15 and intersectin (Chen et al., 1998 ; Yamabhai et al., 1998 ; Nakashima et al., 1999 ). It is thought to induce membrane curvature by binding of PtdIns(4,5)P2 through its ENTH domain and insertion of an N-terminal amphipathic helix into the inner leaflet of the lipid bilayer (Ford et al., 2002 ; Stahelin et al., 2003 ). It also has a ubiquitin-binding motif involved in recruiting ubiquinated cargo molecules to CCPs (Hawryluk et al., 2006 ; Chen and Zhuang, 2008 ; Kazazic et al., 2009 ).We used siRNA treatment to individually reduce the cellular levels of these proteins and examined the effects on CCP dynamics. For all experiments described herein, we assayed cells 72 h after a double-round siRNA treatment. Although this protocol resulted in only partial knockdown of expression levels (Supplementary Figure S2), the sensitivity of our assay nonetheless enabled us to detect reproducible and statistically significant effects (see Figures 1
Reduction of the cellular SNX9 pool by 35% significantly decreased the relative contribution of productive CCPs, with a corresponding increase in early abortive species and no effects on their lifetimes (Figure 2 ). Similar effects were observed upon depletion of CALM by 60% relative to initial cellular expression levels, but the strongly increased early abortive population displayed a significantly slower turnover rate (Figure 2Depletion of Hip1R, Eps15, or Intersectin2 Slows CCP Maturation Hip1R functions at the interface between the actin cytoskeleton and the endocytic machinery through direct and simultaneous binding to both clathrin and F-actin (Engqvist-Goldstein et al., 2004 ). As previously reported, we observed that reduced levels of Hip1R cause unusual actin structures that stably anchor CCPs at the plasma membrane (data not shown; Engqvist-Goldstein et al., 2004 ). As a scaffolding protein, Eps15 brings together different components of the clathrin-dependent endocytic machinery. Its N-terminal region contains three copies of the protein–protein interaction module, the EH domain. Both the depletion of Eps15 (Carbone et al., 1997 ; Huang et al., 2004 ) and the overexpression of truncated forms (Benmerah et al., 1999 ) impair the uptake of Tfn receptors. Intersectins are large molecules believed to function as scaffolding proteins at sites of CCP formation. In addition to three conserved EH domains and five SH3 domains (Guipponi et al., 1998 ; Yamabhai et al., 1998 ) that mediate interactions with, among others, dynamin (Yamabhai et al., 1998 ; Okamoto et al., 1999 ; Sengar et al., 1999 ), intersectins interact with the actin regulatory proteins N-WASP and Cdc42 and have been shown to regulate actin assembly (Hussain et al., 2001 ; McGavin et al., 2001 ).In contrast to the results reported above, depletion of Hip1R, Eps15, and intersectin2 by 55, 75, and 45%, respectively (Supplementary Figure S2), had no significant effect on the proportion of productive CCPs, but all three treatments significantly increased their lifetimes (Figure 3 Endophilin Specifically Functions during Early Events, Whereas GAK Functions at Both Early and Late Stages in CCV Formation The dynamin-binding partner endophilin has been suggested to have an early role in membrane curvature generation, because microinjection of endophilin antibodies in axon nerve terminals resulted in the striking accumulation of shallow CCPs (Ringstad et al., 1999 ). This effect might be mediated by its N-terminal BAR domain (Gallop et al., 2006 ), known to sense and generate membrane curvature. Endophilin depletion by 50% had no effect on the relative proportions of abortive and productive events and no significant effect on the lifetime of productive CCPs. However, we observed a dramatic increase in the rate of turnover of late abortive CCPs (Figure 4The multifunctional cyclin G–associated kinase, GAK, is the nonneuronal homologue of the cochaperone auxilin, which recruits Hsc70 to assembled clathrin, thereby disrupting clathrin–clathrin interactions and inducing clathrin uncoating (Ungewickell et al., 1995 ; Jiang et al., 2000 ; Umeda et al., 2000 ). In addition, GAK has been shown to be involved in early steps of CME by recruiting both clathrin and clathrin adaptors to CCPs and mediating clathrin exchange during CCP maturation (Lee et al., 2005 ). Finally, GAK encodes a kinase domain (Zhang et al., 2005 ) that is homologous to the AAK1 kinase, which phosphorylates the μ2 subunit of AP-2 (Conner and Schmid, 2002 ). Knockdown of GAK by 80% resulted in a novel set of phenotypes. Similar to endophilin, GAK depletion strongly increased the rate of turnover of late abortive CCPs, without affecting their relative contribution, suggesting an early function sensed by the restriction/checkpoint apparatus. The most dramatic phenotype, however, was that the BIC-based model selection detected a fourth, long-lived CCP subpopulation. As for productive CCPs in control cells, the new fourth population could be described by an exponentially decaying distribution with a mean time constant of 171.0 ± 2.5 s (Figure 4 ; Yarar et al., 2005 ), we applied automated tracking to nearly simultaneously acquired EPI/TIR-FM movies (see Materials and Methods) and analyzed 359 CCPs with lifetimes of 140–180 s. Comparison of EPI and TIRF signal intensities clearly showed a ~20 s delay in the disappearance of clathrin-coated structures first from the TIRF field and then from the EPI field (data not shown), confirming that these very long-lived CCPs internalized as regular CCVs. We therefore assume that after GAK silencing, the two long-lived CCP populations resulted from a split of the productive CCP population into a fast (mean lifetime of 40.1 ± 4.5 s) and a slow productive CCPs (mean lifetime of 171.0 ± 2.5 s; Figure 4Clathrin LCa or LCb Depletion Causes Distinct Phenotypes The clathrin triskelion is composed of three clathrin heavy chains (CHCs), each bound to one of two clathrin light chain (CLC) isoforms, designated CLCa and CLCb. Although the precise function of the two CLC isoforms is unknown, they might play a regulatory role in clathrin polymerization (Wilbur et al., 2008 ). Biochemical assays for transferrin internalization have detected only mild, if any, effects upon siRNA depletion of either or both CLCs (Huang et al., 2004 ). To examine the effect of CLC depletion using our more sensitive TIRF-based assay, we carried out siRNA-mediated knockdown of CLCa or CLCb in BSC1 cells stably expressing the AP-2 subunit σ2, tagged with EGFP (σ2-EGFP). As a major component of CCPs, AP-2 colocalizes with clathrin at the forming pit, and CCP trajectories can be tracked and analyzed in the same manner as LCa-EGFP–labeled CCPs (Loerke et al., 2009 ). In agreement with previous results in control cells, our BIC-based model selection identified three kinetically distinct subpopulations of σ2-EGFP–labeled CCPs in cells treated with nonrelevant siRNA. Also as reported earlier (Loerke et al., 2009 ), CCP lifetimes were generally shorter when σ2-EGFP was tracked (cf. Figures 1
DISCUSSION Endocytic Accessory Factors Differentially Affect CCP Dynamics The present study begins to address the differential roles of endocytic accessory factors during CCV formation. By TIRF time-lapse microscopy, particle tracking, and statistical model selection we have analyzed how lifetimes and relative contributions of three distinct CCP subpopulations are altered upon siRNA-mediated depletion of specific endocytic accessory proteins. The high sensitivity of this assay was a prerequisite for the present study, because only mild perturbations (i.e., partial knockdown, see Supplementary Figure S2) were applied to probe the function of proteins. This minimized the risk of uncontrolled nonlinear responses that may be induced by stronger perturbation of a tightly integrated, multifactorial assembly cascade. In contrast to previous siRNA studies, where 90–95% silencing efficiencies of accessory proteins were needed to elicit significant biochemical effects on CME (e.g., Huang et al., 2004 ), the milder protein knockdown (by 35–80%) conditions used in the present study were sufficient to gain insights into the functional differences of several molecular players involved in CME. The mutual independence of lifetimes and contributions of CCP subpopulations and their differential response to siRNA-mediated depletion of select components allowed us to group endocytic accessory proteins into phenotypically distinct classes (Figure 6 ), we identified seven qualitatively distinct phenotypes that suggest their differential involvement in the four aspects of CCV formation. On the basis of these effects, we propose a temporal hierarchy for endocytic accessory protein function (Figure 6
Our previous work had shown that a 50% siRNA-mediated knockdown of AP-2 changed neither the rate of CCV formation nor the relative contribution of CCP subpopulations (Loerke et al., 2009 ). However the total number of CCPs at the cell membrane was proportionally reduced upon depletion of AP-2, indicating that AP-2 complexes are crucial initiators of CCP assembly and likely function in a highly cooperative manner as essential structural components for determining CCP maturation (Hinrichsen et al., 2006 ). On the other hand, depletion of dynamin increased the lifetime of abortive and productive CCP subpopulations, without changing their relative contributions, indicating that dynamin acts as a regulator during CCP maturation. Dynamin also functions to catalyze membrane fission (Pucadyil and Schmid, 2008 ); however, this step is not rate-limiting for CCV formation. No other proteins exhibited the same effects as either dynamin or AP-2, confirming the unique and critical functions of these two core components of the endocytic machinery in CME.Depletion of Most Endocytic Accessory Proteins Decreases the Efficiency of CME Under all conditions, with the exception of GAK depletion, the observed CCP lifetime distributions could be best fitted by a model that invokes three kinetically distinct CCP subpopulations. Knockdown of six of 12 accessory proteins (i.e., SNX9, epsin1, intersectin2, CALM, Eps15, and Hip1R; summarized in Figure 6 ; Engqvist-Goldstein et al., 2004 ; Soulet et al., 2005 ). Those proteins whose depletion leads to a reduction in the proportion of productive CCPs (e.g., SNX9, CALM, and epsin) may play earlier roles in CCP maturation. A critical threshold of these proteins, or their respective activities, may be needed to pass the restriction/checkpoint; hence, their relative absence leads to an increase in abortive events. By contrast, those proteins whose depletion affects only the rate of maturation (e.g., Eps15, Hip1R, and intersectin2) are likely to play later roles in CCV formation and/or could mediate functions not sensed by the restriction/checkpoint apparatus.We and others (Keyel et al., 2004 ) have observed so-called “visitors” by which we mean intracellular CCSs that move transiently through the narrow evanescent field. These fast moving, transiently imaged structures are excluded from our analyses because we eliminate CCSs that are not detected for at least five successive frames. In contrast, we have previously argued (Loerke et al., 2009 ) that the short lived early abortive CCPs correspond to bona fide endocytic intermediates because they are labeled by both LCa-EGFP and σ2-EGFP, and their numbers are proportionally reduced by AP-2 knockdown. The present study provides further support that these abortive events are related to CCV formation, as their numbers are significantly increased by knockdown of SNX9 and CALM. These data suggest that although these proteins are not proportionally limiting for CCP nucleation—that is, unlike AP-2, the total density of CCPs does not decrease in proportion to their depletion (see Supplementary Figure S1B)—each may play a structural role in stabilizing early CCP intermediates and thus reducing their turnover. This is consistent with the known clathrin assembly activities of CALM and might be reflective of clathrin/AP-2 binding and scaffolding functions of SNX9.A Subset of Accessory Proteins Affects the Turnover of Abortive CCPs Depletion of a discrete and limited subset of proteins, namely GAK, CLCa, and endophilin, dramatically increased the rate of turnover of abortive structures. We suggest that the presence and/or activity of these endocytic accessory proteins signals more directly to the restriction/checkpoint apparatus such that their relative absence (upon knockdown) triggers more rapid turnover of incomplete CCP intermediates. These proteins, either through direct interaction with the assembling clathrin coat (GAK and CLCa) or through direct interactions with the underlying membrane (endophilin is a BAR domain–containing protein) may be able to sense critical early stages in CCP maturation that generate curvature and feed this information into the checkpoint. Because clathrin can spontaneously assemble into large, endocytically compromised flat lattices (Miller et al., 1991 ; Chetrit et al., 2009 ), it is attractive to speculate that the absence of curvature in the developing CCP might necessitate rapid turnover of an aberrant intermediate. Further studies are required to test this hypothesis.GAK Silencing Causes a Split of the Productive CCP Population The effects of ~80% knockdown of GAK were unique in that the measured lifetime distribution of CCPs could be significantly better fitted by BIC-based model selection with four kinetically distinct subpopulations. Although we do not know with certainty the functional significance of these longer-lived subpopulations, we have strong evidence that they both represent ultimately productive endocytic events. This is because 1) EPI/TIRF movies show a delay between signal disappearance first in the TIRF-, then in the EPI channel, 2) biochemical studies showed only a relatively minor defect in Tfn uptake at this level of GAK knockdown (data not shown), and 3) the contributions of the two long-lived populations in GAK-depleted cells equaled the contribution of productive CCPs in control cells. The first subpopulation of these longer-lived CCPs (comprising ~66% of productive CCPs) had a shorter mean lifetime than the single productive subpopulation in control cells. We do not think this is biologically relevant, but rather it reflects the parsing of longer-lived species into the fourth subpopulation, thereby reducing the apparent mean lifetime of the remaining subpopulation. It should also be noted that although BIC-based model selection can robustly identify the need for two productive populations for a fit of the lifetime distribution, determining their lifetimes is less precise because the fit now involves a double-exponential decay with relatively similar time scales, numerically a notoriously unstable process. The emergence of two productive CCP subpopulations after GAK depletion could be explained by two mutually nonexclusive hypotheses. First, the split of productive CCPs into two subpopulations could indicate that GAK acts cooperatively and processively to fulfilling its function on individual CCPs before being freed to move to other maturing CCPs. Thus CCPs with some initial GAK associated will tend to recruit more GAK from the reduced pool, whereas CCPs with no GAK will have to wait even longer. Thus, the very-long lived CCPs may represent the subpopulation most depleted of GAK. This interpretation is consistent with TIRF-based analyses of the dynamics of GAK/auxilin association with CCPs in which these proteins were shown to be recruited with burst kinetics at very late stages during CCP invagination (Massol et al., 2006 ; Lee et al., 2006 ). Alternatively, the broad lifetime distribution of the productive CCP population under control conditions may reflect functionally and/or compositionally distinct subpopulations of CCPs. In this scenario, it may be that a preexisting subclass of productive CCPs is differentially sensitive to GAK depletion. Further studies will be needed to resolve these possibilities and/or to identify other mechanisms accounting for these observations.Depletion of GAK also significantly increased the rate of turnover of abortive CCP intermediates. This observation is consistent with its role in mediating assembly of multiple constituents of CCPs and its function in clathrin exchange during early stages of maturation (Lee et al., 2005 , 2006 ). This early function for GAK is also consistent with reports that fluorescently labeled GAK transiently associates with CCPs during early stages of maturation (Massol et al., 2006 ). In addition, GAK interacts directly with dynamin in a nucleotide-dependent manner, and this interaction has been proposed to function at early stages of CCV formation (Newmyer et al., 2003 ). Thus, GAK is poised to feed information into dynamin and thus to affect the endocytosis restriction/checkpoint decision.CLCa and CLCb Function Differentially as Regulators of CME The two light-chain isomers, CLCa and CLCb, share only 60% sequence identity, but are highly conserved between species, retaining 95–98% isoform-specific sequence identity. Although CLCs are an integral part of the basic subunit of a clathrin coat, the triskelion, their precise role is still unknown. It has been suggested that they act as negative regulators of clathrin (Brodsky et al., 2001 ), and this is consistent with our finding that knockdown of CLCa increases the proportion of productive CCPs, whereas CLCb depletion decreases their mean lifetime. Previous biochemical studies were unable to detect a clear phenotype for either single or double siRNA knockdown of CLCs (Huang et al., 2004 ). However, there was an increase in the rate of Tfn uptake after CLCb depletion that was not commented on by the authors, but is nonetheless consistent with our findings.Differential effects of depletion of the CLC isoforms have thus far proven difficult to detect using biochemical assays. However, we find that knockdown of CLCa or CLCb resulted in opposite effects on the rate of turnover of abortive CCPs. The relative absence of CLCa triggers rapid turnover of abortive CCPs, whereas the relative absence of CLCb delays decision making and prolongs the lifetime of abortive species. These data suggest that both CLC isoforms can signal to the endocytosis restriction/checkpoint to either negatively or positively regulate the timing of the checkpoint decision. Further work is needed to shed light on the precise function of these two CLC isoforms. Further Evidence for the Existence of an Endocytosis Restriction/Checkpoint Previous studies established that the rate of turnover of abortive CCPs is dependent on the basal GTP binding and hydrolysis activities of dynamin (Loerke et al., 2009 ). On the basis of these findings, we proposed that dynamin functions as a fidelity monitor of CCP maturation to mediate endocytosis restriction point/checkpoint decisions that gate progression to functional CCPs. As originally defined from cell cycle studies, the term “restriction point” suggests that the process will not proceed until all required steps are completed (e.g., DNA synthesis before “Start”). By comparison, the term “checkpoint” suggests that defects in the decision-making machinery would result in progression beyond the checkpoint even if essential processes are not completed (e.g., the “spindle checkpoint”), resulting in the formation of aberrant products (e.g., chromosome instability). As we do not know whether defective CCVs can be formed as a consequence of a defective checkpoint apparatus, we here use the two terms interchangeably. We further proposed (Loerke et al., 2009 ) that dynamin—as an integral part of the checkpoint apparatus—receives input from a subset of accessory factors that sense and/or mediate coat assembly, membrane curvature, and cargo selection to determine the suitability of CCP intermediates for progression beyond the restriction/checkpoint. Of the 10 accessory proteins analyzed here, we identified seven proteins whose depletion affected either the relative contributions and/or lifetimes of abortive structures. Proteins (e.g., CALM, SNX9, and epsin1) whose depletion affects only the relative contributions of abortive versus productive events are likely to mediate different aspects of early CCP maturation that can be sensed by the checkpoint apparatus. By comparison, proteins whose knockdown affects the lifetimes of abortive species (e.g., CLCa, CLCb, GAK, and endophilin) are more likely to directly sense critical aspects of CCP maturation and to trigger CCP turnover through the checkpoint apparatus.Our data suggests that curvature, coat assembly, and cargo may be important determining factors in CCP maturation. Of four accessory factors whose depletion strongly affected the lifetimes of abortive CCPs, three (CLCa, CLCb, and GAK) are positioned to sense clathrin assembly. The fourth (endophilin) encodes a curvature-sensing domain. Two of these proteins (GAK and endophilin) directly interact with dynamin, providing a potential mechanism for input into the checkpoint decision. CALM, SNX9, and epsin1 also encode curvature-sensing and/or curvature-generating domains. Knockdown of these proteins did not alter the rate of turnover, but increased the proportion of abortive CCPs; thus these proteins likely mediate early stages of CCP maturation that are sensed by the restriction/checkpoint apparatus. Interestingly, depletion of CALM, which functions in both coat assembly (Meyerholz et al., 2005 ) and in recruitment of the v-SNARE, a cargo molecule that must be included in CCVs to direct fusion with their intracellular targets, also affected the turnover of early abortive CCPs. Thus, we suggest that this subset of seven proteins may provide functionally relevant input, either directly or indirectly, into the restriction/checkpoint signaling apparatus. Further biochemical studies as well as detailed image analyses of the effects of point mutations in these proteins will be needed to establish their putative roles as sensors and modulators of dynamin's enzymatic activities in order to determine how they might function as components of an endocytosis checkpoint.[Supplemental Materials]
ACKNOWLEDGMENTS We thank members of the Schmid and Danuser labs for helpful discussions. This research was supported by National Institutes of Health R01 Grants GM73165 to G.D. and S.L.S.; Grants GM42455 and MH61345 to S.L.S.; and by a fellowship of the American Heart Association to M.M. M.S. was a visiting graduate student at the Scripps Research Institute in 2008 from the Ecole Supérieure de Biotechnologie de Strasbourg (ESBS) and supported by a fellowship of the German Academic Exchange Service (DAAD). This is TSRI Manuscript 20089. Abbreviations used: Footnotes This article was published online ahead of print in MBC in Press (http://www.molbiolcell.org/cgi/doi/10.1091/mbc.E09-03-0256) on May 20, 2009. REFERENCES
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Nature. 2003 Mar 6; 422(6927):37-44.
[Nature. 2003]Nature. 2007 Aug 23; 448(7156):883-8.
[Nature. 2007]J Biol Chem. 1999 Oct 29; 274(44):31693-9.
[J Biol Chem. 1999]Traffic. 2008 Mar; 9(3):417-29.
[Traffic. 2008]Traffic. 2009 Feb; 10(2):235-45.
[Traffic. 2009]J Biol Chem. 2004 Apr 16; 279(16):16657-61.
[J Biol Chem. 2004]Mol Biol Cell. 2004 Apr; 15(4):1666-79.
[Mol Biol Cell. 2004]Mol Biol Cell. 2005 Apr; 16(4):2058-67.
[Mol Biol Cell. 2005]Nat Cell Biol. 2002 Sep; 4(9):691-8.
[Nat Cell Biol. 2002]Cell. 2003 Nov 14; 115(4):475-87.
[Cell. 2003]Mol Biol Cell. 2005 Apr; 16(4):2058-67.
[Mol Biol Cell. 2005]PLoS One. 2008 Jun 11; 3(6):e2416.
[PLoS One. 2008]Cell. 2005 Oct 21; 123(2):305-20.
[Cell. 2005]J Biol. 2003; 3(1):4.
[J Biol. 2003]J Biol Chem. 2004 Apr 16; 279(16):16657-61.
[J Biol Chem. 2004]Dev Cell. 2007 Jul; 13(1):43-56.
[Dev Cell. 2007]PLoS Biol. 2009 Mar 17; 7(3):e57.
[PLoS Biol. 2009]Nat Methods. 2008 Aug; 5(8):695-702.
[Nat Methods. 2008]PLoS Biol. 2009 Mar 17; 7(3):e57.
[PLoS Biol. 2009]PLoS Biol. 2009 Mar 17; 7(3):e57.
[PLoS Biol. 2009]PLoS Biol. 2009 Mar 17; 7(3):e57.
[PLoS Biol. 2009]Cell. 2004 Sep 3; 118(5):591-605.
[Cell. 2004]Nat Methods. 2008 Aug; 5(8):695-702.
[Nat Methods. 2008]PLoS Biol. 2009 Mar 17; 7(3):e57.
[PLoS Biol. 2009]PLoS Biol. 2009 Mar 17; 7(3):e57.
[PLoS Biol. 2009]PLoS Biol. 2009 Mar 17; 7(3):e57.
[PLoS Biol. 2009]Mol Biol Cell. 2005 Apr; 16(4):2058-67.
[Mol Biol Cell. 2005]J Cell Sci. 2009 Jan 1; 122(Pt 1):5-11.
[J Cell Sci. 2009]J Biol Chem. 1999 Oct 29; 274(44):31693-9.
[J Biol Chem. 1999]Traffic. 2008 Mar; 9(3):417-29.
[Traffic. 2008]Nature. 1998 Aug 20; 394(6695):793-7.
[Nature. 1998]Mol Biol Cell. 2005 Apr; 16(4):2058-67.
[Mol Biol Cell. 2005]Mol Biol Cell. 2004 Apr; 15(4):1666-79.
[Mol Biol Cell. 2004]Cancer Res. 1997 Dec 15; 57(24):5498-504.
[Cancer Res. 1997]J Biol Chem. 2004 Apr 16; 279(16):16657-61.
[J Biol Chem. 2004]J Cell Sci. 1999 May; 112 ( Pt 9)():1303-11.
[J Cell Sci. 1999]Genomics. 1998 Nov 1; 53(3):369-76.
[Genomics. 1998]Neuron. 1999 Sep; 24(1):143-54.
[Neuron. 1999]EMBO J. 2006 Jun 21; 25(12):2898-910.
[EMBO J. 2006]Nature. 1995 Dec 7; 378(6557):632-5.
[Nature. 1995]J Biol Chem. 2000 Mar 24; 275(12):8439-47.
[J Biol Chem. 2000]Eur J Cell Biol. 2000 May; 79(5):336-42.
[Eur J Cell Biol. 2000]J Cell Sci. 2005 Sep 15; 118(Pt 18):4311-21.
[J Cell Sci. 2005]Traffic. 2005 Dec; 6(12):1103-13.
[Traffic. 2005]J Biol Chem. 2008 Nov 21; 283(47):32870-9.
[J Biol Chem. 2008]J Biol Chem. 2004 Apr 16; 279(16):16657-61.
[J Biol Chem. 2004]PLoS Biol. 2009 Mar 17; 7(3):e57.
[PLoS Biol. 2009]J Biol Chem. 2004 Apr 16; 279(16):16657-61.
[J Biol Chem. 2004]PLoS Biol. 2009 Mar 17; 7(3):e57.
[PLoS Biol. 2009]PLoS Biol. 2009 Mar 17; 7(3):e57.
[PLoS Biol. 2009]Proc Natl Acad Sci U S A. 2006 Jun 6; 103(23):8715-20.
[Proc Natl Acad Sci U S A. 2006]Cell. 2008 Dec 26; 135(7):1263-75.
[Cell. 2008]J Biol Chem. 2004 Apr 16; 279(16):16657-61.
[J Biol Chem. 2004]Mol Biol Cell. 2004 Apr; 15(4):1666-79.
[Mol Biol Cell. 2004]Mol Biol Cell. 2005 Apr; 16(4):2058-67.
[Mol Biol Cell. 2005]J Biol Chem. 2004 Mar 26; 279(13):13190-204.
[J Biol Chem. 2004]PLoS Biol. 2009 Mar 17; 7(3):e57.
[PLoS Biol. 2009]Cell. 1991 May 17; 65(4):621-32.
[Cell. 1991]Biochem J. 2009 Mar 15; 418(3):701-15.
[Biochem J. 2009]Proc Natl Acad Sci U S A. 2006 Jul 5; 103(27):10265-70.
[Proc Natl Acad Sci U S A. 2006]J Cell Sci. 2006 Sep 1; 119(Pt 17):3502-12.
[J Cell Sci. 2006]J Cell Sci. 2005 Sep 15; 118(Pt 18):4311-21.
[J Cell Sci. 2005]J Cell Sci. 2006 Sep 1; 119(Pt 17):3502-12.
[J Cell Sci. 2006]Proc Natl Acad Sci U S A. 2006 Jul 5; 103(27):10265-70.
[Proc Natl Acad Sci U S A. 2006]Dev Cell. 2003 Jun; 4(6):929-40.
[Dev Cell. 2003]Annu Rev Cell Dev Biol. 2001; 17():517-68.
[Annu Rev Cell Dev Biol. 2001]J Biol Chem. 2004 Apr 16; 279(16):16657-61.
[J Biol Chem. 2004]PLoS Biol. 2009 Mar 17; 7(3):e57.
[PLoS Biol. 2009]Traffic. 2005 Dec; 6(12):1225-34.
[Traffic. 2005]