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eLife logoLink to eLife
. 2014 Dec 10;3:e04037. doi: 10.7554/eLife.04037

Registered report: Widespread potential for growth factor-driven resistance to anticancer kinase inhibitors

Edward Greenfield 1, Erin Griner 2; Reproducibility Project: Cancer Biology*, Elizabeth Iorns 4, William Gunn 5, Fraser Tan 6, Joelle Lomax 7, Timothy Errington 8
Editor: Joan Massagué3
PMCID: PMC4270159  PMID: 25490934

Abstract

The Reproducibility Project: Cancer Biology seeks to address growing concerns about reproducibility in scientific research by conducting replications of 50 papers in the field of cancer biology published between 2010 and 2012. This Registered Report describes the proposed replication plan of key experiments from ‘Widespread potential for growth-factor-driven resistance to anticancer kinase inhibitors’ by Wilson and colleagues, published in Nature in 2012 (Wilson et al., 2012). The experiments that will be replicated are those reported in Figure 2B and C. In these experiments, Wilson and colleagues show that sensitivity to receptor tyrosine kinase (RTK) inhibitors can be bypassed by various ligands through reactivation of downstream signaling pathways (Figure 2A; Wilson et al., 2012), and that blocking the receptors for these bypassing ligands abrogates their ability to block sensitivity to the original RTK inhibitor (Figure 2C; Wilson et al., 2012). The Reproducibility Project: Cancer Biology is a collaboration between the Center for Open Science and Science Exchange, and the results of the replications will be published by eLife.

DOI: http://dx.doi.org/10.7554/eLife.04037.001

Research organism: human

Introduction

A recurring theme in treatment of cancer is the acquisition of drug resistance. The effectiveness of therapies targeting specific mutations in receptor tyrosine kinases (RTKs) is limited by the acquisition of resistance to the drugs over the course of treatment (Mok et al., 2009; Camidge et al., 2014). Resistance can be acquired through new mutations that block the action of the RTK inhibitors or their uptake and/or genetic amplification of downstream target genes of the RTK (Chen and Fu, 2011; Garrett and Arteaga, 2011; Sequist et al., 2011; Gainor and Shaw, 2013; Yang, 2013). Several studies, including this work by Wilson and colleagues, elucidated another mechanism for this acquisition of resistance: the engagement of parallel RTK signaling pathways that converge on common downstream survival signals via signals from the tumor microenvironment. In this study, Wilson and colleagues examined several cancer cell lines for ligand-mediated drug resistance (Wilson et al., 2012).

In Figure 2B/C, Wilson and colleagues demonstrated that resistance to primary kinase inhibitor treatment can be induced by the addition of rescuing ligands that activate the PI(3)K–AKT and MAPK pro-survival signaling pathways. This resistance can be overcome with the addition of an appropriate secondary kinase inhibitor. Three different cancer cell line models were used to demonstrate this phenomenon. Treatment of A204 (a PDGFR amplified rhabdomyosarcoma cell line) with the ligand FGF activated pFRS2 and pERK, inducing resistance to sunitinib. The addition of a secondary kinase inhibitor, PD173074, blocked FGF-induced pFRS2 and pERK activation, restoring sensitivity to sunitinib. The treatment of M14 (a BRAF-mutated melanoma cell line) with the ligand NRG1 activated pHER3 and pAKT, inducing partial resistance to PLX4032. The addition of a secondary kinase inhibitor, lapatinib, blocked NRG1-induced pHER3 and pAKT activation, restoring sensitivity to PLX4032. Treatment of KHM-3S (an EGFR-mutated small cell lung cancer cell line) with the ligand HGF activated pMET and pERK, inducing resistance to Erlotinib. The addition of a secondary kinase inhibitor, crizotinib, blocked HGF-induced pMET and pERK activation, restoring sensitivity to erlotinib.

The cell viability assays examining drug sensitivity and the Western blots examining levels of phosphorylated kinases in Figures 2B and 2C, respectively, are the key experiments that demonstrate that growth factor ligands can reactivate downstream signaling components important for cancer cell survival, causing resistance to anticancer kinase inhibitors (Wilson et al., 2012). These experiments are replicated in Protocols 1 and 2.

Two studies published around the same time as the work of Wilson and colleagues also support the proposed mechanism of acquired resistance to RTK inhibition by signaling from the tumor microenvironment. Straussman and colleagues demonstrated that HGF signaling derived from the tumor microenvironment could bypass EGFR inhibition by activation of MET signaling (Straussman et al., 2012, also included for replication in the Reproducibility Project: Cancer Biology), and Harbinski and colleagues, in an approach similar to Wilson and colleagues, showed that multiple growth factor ligands could ‘bypass’ inhibitor-targeted RTKs (Harbinski et al., 2012).

Since the publication of Wilson and colleagues' work, several publications have reported similar results to those being replicated in Protocols 1 and 2. Similar to the experiments with A204 cells above, Welti and colleagues demonstrated that FGF ligands could induce resistance to sunitinib, which could be reversed by the addition of PD173074 (Welti et al., 2011). These experiments were performed in HUVEC cells, whereas A204 cells were used in the study being replicated. Similar to the experiments on M14 cells above, Montero-Conde and colleagues showed that NRG1 ligand could activate pHER3 and pAKT in the presence of PLX4032, and this activation could be reversed by the addition of lapatinib (Montero-Conde et al., 2013). These experiments were performed in 8505C cells, whereas M14 cells were used in the study being replicated. Similar to the experiments performed on KHM-S3 cells above, several groups have demonstrated that HGF ligand can induce resistance to erlotinib and that this resistance can be reversed by the addition of crizotinib (Nakagawa et al., 2012; Nakade et al., 2014). These experiments were performed in PC-9 and HCC827 cells, whereas KHM-3S cells were used in the study being replicated.

Materials and methods

Unless otherwise noted, all protocol information was derived from the original paper, references from the original paper, or information obtained directly from the authors. An asterisk (*) indicates data or information provided by the Reproducibility Project: Cancer Biology core team. A hashtag (#) indicates information provided by the replicating lab.

Protocol 1: Cell viability assays

This protocol describes cell viability assays to determine the IC50 values of three cancer cell lines treated with primary kinase inhibitor alone, primary kinase inhibitor in combination with rescuing ligand, and primary kinase inhibitor in triple combination with rescuing ligand and a drug targeting the rescuing ligand's receptor tyrosine kinase (RTK) (termed the secondary kinase inhibitor) (Figure 2B).

Sampling

  • The original data presented is qualitative, and the authors were unable to share the raw data values with the RP:CB core team. This prevents power calculations being performed a priori to determine the sample size (number of biological replicates). In order to determine an appropriate number of replicates to perform initially, we have estimated the sample sizes required based on a range of potential variance. We will also determine the sample size post hoc as described in Power Calculations.

    1. Please see Power Calculations for details.

  • Each experiment has three cohorts. In each cohort, a dilution series of the primary kinase inhibitor (10−4, 10−3, 10−2, 10−1, 100, and 101 µM) is run three times; once alone, once with the rescuing ligand, and once with both the rescuing ligand and the secondary kinase inhibitor. The effect of the secondary kinase inhibitor alone will also be assessed. Each condition will be run in triplicate.

    1. Cohort 1: A204 cell line.

      • Media only [additional].

      • Vehicle control.

      • 0.001 µM–10 µM sunitinib + no ligand.

      • 0.001 µM–10 µM sunitinib + 50 ng/ml FGF.

      • 0.001 µM–10 µM sunitinib + 50 ng/ml FGF + 0.5 µM PD173074.

      • 0.5 µM PD173074 + no ligand [additional].

    2. Cohort 2: M14 cell line.

      • Media only [additional].

      • Vehicle control.

      • 0.001 µM–10 µM PLX4032 + no ligand.

      • 0.001 µM–10 µM PLX4032 + 50 ng/ml NRG1.

      • 0.001 µM–10 µM PLX4032 + 50 ng/ml NRG1 + 0.5 µM lapatinib.

      • 0.5 µM lapatinib + no ligand [additional].

    3. Cohort 3: KHM-3S cell line.

      • Media only [additional].

      • Vehicle control.

      • 0.001 µM–10 µM erlotinib + no ligand.

      • 0.001 µM–10 µM erlotinib + 50 ng/ml HGF.

      • 0.001 µM–10 µM erlotinib + 50 ng/ml HGF + 0.5 µM crizotinib.

      • 0.5 µM crizotinib + no ligand [additional].

Materials and reagents

Reagent Type Manufacturer Catalog # Comments
96-well tissue culture plates Materials Corning (Sigma-Aldrich) CLS3516 Original unspecified
KHM-3S cells Cells JCRB Cell Bank JCRB0138 Original source of the cells unspecified
A204 Cells ATCC HTB-82 Original source of the cells unspecified
M14 Cells ATCC HTB-129* Original source of the cells unspecified
Lapatinib Drug LC Laboratories L-4804 Original formulation unspecified
Crizotinib Drug Sigma-Aldrich PZ0191 Originally from Selleck Chemicals
PD173074 Drug Sigma-Aldrich P2499 Originally from Tocris Bioscience
PLX4032 Drug Active Biochem A-1130
Sunitinib Drug Sigma-Aldrich PZ0012 Originally from Selleck Chemicals, formulation unspecified
Erlotinib Drug LC Laboratories E-4007
HGF Ligand Sigma-Aldrich H5791 Originally obtained from Peprotech
FGF-basic Ligand Sigma-Aldrich F0291 Originally obtained from Peprotech
NRG1-β1 Ligand Novus Biologicals H00003084-P01 Originally obtained from R&D Systems
RPMI 1640 Media Sigma-Aldrich R8758 Originally from Gibco, formulation unspecified
FBS Reagent Sigma-Aldrich F4135 Originally from Gibco
Penicillin Antibiotic Sigma-Aldrich P4458 Original unspecified
Streptomycin Antifungal Original unspecified
Paraformaldehyde Reagent Sigma-Aldrich 158127 Original unspecified
Syto 60 Reagent Life Technologies S11342 Original unspecified
Odyssey scanner Equipment LiCOR
Odyssey application software Software LiCOR
*

The breast cancer cell line MDA-MB-435 has been shown to be mislabeled; it is in fact identical to the M14 melanoma cell line (Rae et al., 2007; Chambers, 2009; Holliday and Speirs, 2011).

Procedure

Notes
  • All cells will be sent for mycoplasma testing and STR profiling.

  • Medium for all cell lines: RPMI 1640 supplemented with 10% FBS, 50 U/ml penicillin, and 50 µg/ml streptomycin.

  • Cells maintained at 37°C in a humidified atmosphere at 5% CO2.

    1. Seed 3000–5000 cells per well into 96-well plates. For each condition replicate seed 1 well as the media control, 1 well as the vehicle control, 1 well for treatment with the secondary kinase inhibitor alone, and 6 wells per concentration curve (10−4, 10−3, 10−2, 10−1, 100, and 101 µM), of which there are three.

      • a. 6 wells per concentration curve × 3 concentration curves = 18 wells + 3 wells = 21 wells per cohort.

    2. 18–24 hr after seeding treat 3 wells per condition with appropriate treatment (see Sampling).

      • a. Lab will record the vehicle used to solubilize the drugs.

    3. 72 hr after treatment, fix cells in 4% paraformaldehyde (PFA).

      • a. Lab will record the PFA incubation time.

    4. Stain with Syto 60 according to the manufacturer's recommendations and assay cell number using an Odyssey with Odyssey Application Software.

      • a. Include empty wells and media only wells.

    5. Calculate cell viability by dividing the fluorescence from the drug-treated cells by the fluorescence from the control (vehicle) treated cells. Fit normalized data to a sigmoidal dose–response curve.

      • a. Also calculate the effect of vehicle by dividing the fluorescence from the control vehicle cells by the fluorescence from the media only treated cells [additional control].

      • b. Determine the IC50 values for each curve.

      • c. Lab will document the software used to fit the data to a sigmoidal dose–response curve and calculate the IC50 values.

    6. Repeat independently two additional times.

Deliverables

  • Data to be collected:

    1. Raw fluorescence data and calculated cell viability.

    2. Semi-logarithmic graph for each condition of primary kinase inhibitor (log) vs normalized cell viability (linear) for each cell line [comparable to Figure 2B].

    3. Calculated IC50 for each condition.

Confirmatory analysis plan

  • Statistical analysis of the Replication Data:

    1. For each cell line compare the IC50 of primary kinase inhibitor alone, primary kinase inhibitor + ligand, and primary kinase inhibitor + ligand + secondary kinase inhibitor.

      • • ANOVA.

  • Meta-analysis of original and replication attempt effect sizes:

    1. We will plot the replication data (mean and 95% confidence interval) and will include the original data point, calculated directly from the representative image in Figure 2B, as a single point on the same plot for comparison.

Known differences from the original study

  • We are including two additional control conditions;

    1. Media alone.

      • a. To provide a baseline.

    2. Treatment of the cells with the secondary kinase inhibitor alone.

      • a. To assess any effects, the secondary kinase inhibitor may be independent of the ligand and primary kinase inhibitor.

Provisions for quality control

  • All data obtained from the experiment—raw data, data analysis, control data, and quality control data—will be made publicly available, either in the published manuscript or as an open access dataset available on the Open Science Framework (https://osf.io/h0pnz/).

  • Cell lines will be validated by STR profiling and screened for mycoplasma contamination.

  • A lab from the Science Exchange network with extensive experience in conducting cell viability assays will perform these experiments.

Protocol 2: Western blot assays

This protocol describes Western blot assays to determine the levels of activated phosphorylated signaling pathways in three cancer cell lines treated with primary kinase inhibitor alone, primary kinase inhibitor in combination with rescuing ligand, and primary kinase inhibitor in triple combination with rescuing ligand and a drug targeting the rescuing ligand's receptor tyrosine kinase (RTK) (termed the secondary kinase inhibitor) (Figure 2C).

Sampling

  • The original data presented is qualitative. This prevents power calculations being performed a priori to determine the sample size (number of biological replicates). In order to determine an appropriate number of replicates to perform initially, we have estimated the sample sizes required based on a range of potential variance. We will also determine the sample size post hoc as described in Power Calculations.

    1. Please see Power Calculations for details.

  • Each experiment has three cohorts. Each cohort will consist of cells treated with media alone, with vehicle alone, with the primary kinase inhibitor, with primary kinase inhibitor and the rescuing ligand and with the primary kinase inhibitor, the rescuing ligand and the secondary kinase inhibitor. The effect of the secondary kinase inhibitor alone will also be assessed. Each condition will be run once (i.e., no technical replicates will be performed).

    1. Cohort 1: A204 cell line.

      • Media only [additional].

      • Vehicle control.

      • 1 µM sunitinib + no ligand.

      • 1 µM sunitinib + 50 ng/ml FGF.

      • 1 µM sunitinib + 50 ng/ml FGF + 0.5 µM PD173074.

      • 1 µM PD173074 + no ligand [additional].

    2. Cohort 2: M14 cell line.

      • Media only [additional].

      • Vehicle control.

      • 1 µM PLX4032 + no ligand.

      • 1 µM PLX4032 + 50 ng/ml NRG1.

      • 1 µM PLX4032 + 50 ng/ml NRG1 + 0.5 µM lapatinib.

      • 1 µM lapatinib + no ligand [additional].

    3. Cohort 3: KHM-3S cell line.

      • Media only [additional].

      • Vehicle control.

      • 1 µM erlotinib + no ligand.

      • 1 µM erlotinib + 50 ng/ml HGF.

      • 1 µM erlotinib + 50 ng/ml HGF + 0.5 µM Crizotinib.

      • 1 µM crizotinib + no ligand [additional].

    4. Cohort 4: positive control cell lines.

      • For Cohort 1: HL60 cells treated with FGF [additional control].

      • For Cohort 2: MCF7 cells treated with NRG1 [additional control].

      • For Cohort 3: HEK293 cells treated with HGF [additional control].

        • a. Treatment of these cell lines with their cognate growth factor ligands will serve as a positive control for ligand activity.

Materials and reagents:

Reagent Type Manufacturer Catalog # Comments
96-well Tissue culture plates Materials Corning (Sigma-Aldrich) CLS3596 Original unspecified
6-well tissue culture plates Materials Corning (Sigma-Aldrich) CLS3516 Original unspecified
KHM-3S cells Cells JCRB Cell Bank JCRB0138 Original source of the cells unspecified
A204 cells Cells ATCC HTB-82 Original source of the cells unspecified
M14 cells Cells ATCC HTB-129 Original source of the cells unspecified
HL60 cells Cells ATCC CCL-240
MCF7 cells Cells ATCC HTB-22
HEK293 cells Cells ATCC CRL-1573
Lapatinib Drug LC Laboratories L-4804 Original formulation unspecified
Crizotinib Drug Sigma-Aldrich PZ0191 Originally from Selleck Chemicals
PD173074 Drug Sigma-Aldrich P2499 Originally from Tocris Bioscience
PLX4032 Drug Active Biochem A-1130
Sunitinib Drug Sigma-Aldrich PZ0012 Originally from Selleck Chemicals, formulation unspecified
Erlotinib Drug LC Laboratories E-4007
HGF Ligand Sigma-Aldrich H5791 Originally obtained from Peprotech
FGF-basic Ligand Sigma-Aldrich F0291 Originally obtained from Peprotech
NRG1-β1 Ligand Novus Biologicals P1426 Originally obtained from R&D Systems
RPMI 1640 Media Sigma-Aldrich R8758 Originally from Gibco, formulation unspecified
FBS Reagent Sigma-Aldrich F4135 Originally from Gibco
Penicillin Antibiotic Sigma-Aldrich P4458 Original unspecified
Streptomycin Antifungal Original unspecified
Halt protease and phosphatase cocktail inhibitor Reagent Thermo Scientific 78440
Image J Software National Institutes of Health (NIH) N/A
p-PDGFRα Antibody Santa Cruz SC-12911 190 kDa
PDGFRα Antibody Cell Signaling 5241 190 kDa
p-AKT S473 Antibody Invitrogen 44-621 G 65 kDa
AKT Antibody Cell Signaling 9272 65 kDa
p-ERK T202/Y204 Antibody Cell Signaling 9101 44,42 kDa
ERK Antibody Cell Signaling 9102 44,42 kDa
pFRS2α Y196 Antibody Cell Signaling 3864 85 kDa
FRS2α Antibody Santa Cruz SC-8318 85 kDa
β-tubulin Antibody Cell Signaling 2146 55 kDa
pHER3 Y1289 Antibody Cell Signaling 4791 185 kDa
HER3 Antibody Santa Cruz SC-285 185 kDa
p-EGFR Y1068 Antibody Abcam ab5644 185 kDa
EGFR Antibody BD Biosciences 610017 185 kDa
p-MET Y1234/5 Antibody Cell Signaling 3126 145 kDa
MET Antibody Santa Cruz SC-10 145 kDa
Anti-Mouse IgG-HRP Antibody Cell Signaling Technology 7076P2 Original unspecified
Anti-Rabbit IgG-HRP Antibody Cell Signaling Technology 7074P2 Original unspecified
Anti-Goat IgG-HRP Antibody Santa Cruz Biotechnology sc-2020 Original unspecified
Trypsin-EDTA solution (1X) Reagent Sigma-Aldrich T3924 Original unspecified
Dulbecco’s Phosphate Buffered Saline Reagent Sigma-Aldrich D1408 Original unspecified
Mini Protean TGX 4–15% Tris-Glycine gels; 15-well; 15 μl Reagent Bio-Rad 456-1086 Original unspecified
2X Laemmli sample buffer Reagent Sigma-Aldrich S3401 Original unspecified
ECL DualVue Western Markers (15 to 150 kDa) Reagent Sigma-Aldrich GERPN810 Original unspecified
Nitrocellulose membrane; 0.45 μm, 20 × 20 cm Reagent Bio-Rad 162-0113 Original unspecified
Ponceau S Reagent Sigma-Aldrich P7170 Original unspecified
Tris Buffered Saline (TBS); 10X solution Reagent Sigma-Aldrich T5912 Original unspecified
Tween 20 Reagent Sigma-Aldrich P1379 Original unspecified
Nonfat-Dried Milk Reagent Sigma-Aldrich M7409 Original unspecified
Super Signal West Pico Substrate Reagent Thermo-Fisher (Pierce) 34087

Procedure

Notes
  • All cells will be sent for mycoplasma testing and STR profiling.

  • Medium for cell lines: RPMI 1640 supplemented with 10% FBS, 50 U/ml penicillin, and 50 µg/ml streptomycin.

    1. MCF7 cells and HEK293 cells are maintained in DMEM + 10% FBS.

  • Cells maintained at 37°C in a humidified atmosphere at 5% CO2.

    1. Seed cells in plates.

      • a. Two control and four experimental wells (6 wells total) are needed for each cell line in Cohorts 1–3.

        • i. Lab will determine and record the number of cells seeded and well size used.

      • b. *For Cohort 4 seed cells as needed into wells of a 6-well plate.

    2. 18–24 hr after seeding treat wells in Cohorts 1–3 with conditions as described in the Sampling section.

      • a. Lab will determine and record vehicle for preparation of drug solutions.

      • b. Harvest protein as in Step 5 after 2 hr of treatment.

    3. Simultaneously treat cells in Cohort 4 as follows:

      • a. HL60 cells. Note: This protocol is based on Krejci et al. (2003).

        • i. Serum starve HL60 cells for 24 hr prior to protein harvesting.

          • Serum starve = DMEM + 0% FBS.

        • ii. Treat cells for 10 min with 100 ng/ml FGF.

        • iii. Harvest cell lysates as noted in Step 5.

      • b. MCF7 cells. Note: This protocol is based on Sarup et al. (2008).

        • i. Serum starve cells for 48 hr prior to protein harvesting.

          • Serum starve = DMEM + 0.1% BSA.

        • ii. Treat cells with 1 nmol/l NRG1 for 10 min at 37°C.

        • iii. Harvest cell lysates as noted in Step 5.

      • c. HEK293 cells. Note: This protocol is based on Wright et al. (2012).

        • i. Serum starve HEK293 cells for 24 hr prior to protein harvesting.

          • Serum starve = DMEM + 0% FBS.

        • ii. Treat cells with 29 ng/ml HGF for 10 min at 37°C.

        • iii. Harvest cell lysates as noted in Step 5.

    4. #Preparation of cell lysate:

      • a. Note: from here on, the replicating lab will use their in-house Western blot protocol, as recommended by the original authors.

      • b. Harvest cells from the tissue culture plate using 1× trypsin–EDTA.

      • c. Wash cells with 1× cold PBS and spin at 1200 rpm for 5 min.

      • d. Decant the PBS and add lysis buffer to the cell pellet and resuspend well.

      • e. Incubate at room temperature for 5 min.

      • f. Spin solution at 13,000 rpm for 30 min at 4°C using a benchtop centrifuge.

      • g. Collect the lysate/protein sample and store at −20°C or −80°C for later use.

    5. #SDS-PAGE separation:

      • a. Prepare the lysate sample by adding SDS reducing loading dye to ∼25–30 µg of protein sample and boiling at 95°C–100°C for 5 min.

        • i. Lab will record exact amount of protein loaded and provide data from determining protein concentration.

      • b. Let samples cool on ice and quick-spin the tubes to collect any droplets on the cap of the tube.

      • c. Prepare the gel for sample loading—insert the gel in the gel box with 1× running buffer and ensure there is no leak.

        • i. Based on the expected MWs of the targets, lab will determine the optimal percentage gel to use.

      • d. Load 16 µl of sample (25–30 µg/lane) in each well of the Tris–glycine gel.

      • e. Run the sample at 175 V for 25 min.

      • f. Remove the gel from the cassette and rinse with water.

    6. #Transfer and blocking:

      • a. Transfer protein on the gel to a nitrocellulose membrane for 1 hr at 12 V using a semi-dry transfer apparatus, 1× transfer buffer, and blotting sheets.

      • b. Verify the efficiency of the transfer by Ponceau staining of the membrane.

        • i. Lab will record an image of the Ponceau-stained membrane.

      • c. Incubate the blots in 5% non-fat skim milk for 1 hr at room temperature.

    7. #Antibody probing:

      • a. Dilute the primary antibodies according to the manufacturer's recommendations, as suggested by the original authors.

        • i. If the manufacturer recommends a range of dilutions, lab will use a dilution in the middle of the recommended dilution range.

        • ii. A204:

          • p-PDGFRα.

          • PDGFRα.

          • p-AKT S473.

          • AKT.

          • p-ERK T202/Y204.

          • ERK.

          • pFRS2α Y196.

          • FRS2α.

          • β-tubulin [additional control].

            • A. Loading control.

        • iii. M14:

          • pHER3 Y1289.

          • HER3.

          • p-AKT S473.

          • AKT.

          • p-ERK T202/Y204.

          • ERK.

          • β-tubulin [additional control].

            • A. Loading control.

        • iv. KHM-3S:

          • p-EGFR Y1068.

          • EGFR.

          • p-AKT S473.

          • AKT.

          • p-ERK T202/Y204.

          • ERK.

          • p-MET Y1234/5.

          • MET.

          • β-tubulin [additional control].

            • A. Loading control.

        • v. HL60:

          • pERK T202/Y204.

          • ERK.

          • β-tubulin [additional control].

            • A. Loading control.

        • vi. MCF7:

          • pHER3.

          • HER3.

          • β-tubulin [additional control].

            • A. Loading control.

        • vii. HEK293:

          • pMET.

          • MET.

          • β-tubulin [additional control].

            • A. Loading control.

      • b. Add the antibody solutions to the membranes and incubate them for 12–16 hr at 4°C.

      • c. Wash the blots with Tris-buffered saline (TBS) and with 0.5% Tween-20 three times for 10 min each.

      • d. Dilute HRP-secondary antibody in 5% milk and add to the blots.

        • i. Lab will record the dilution factor of the secondary antibody.

      • e. Incubate at room temperature for 1 hr.

      • f. Wash the blots with TBS +0.5% Tween-20 four times for 15 min each.

    8. #Developing:

      • a. Remove as much wash buffer as possible.

      • b. Mix Super Signal West Pico Chemiluminescent Substrate solutions in equal proportions and add it to the blot.

      • c. Incubate for ∼1 min.

      • d. Insert the blot in the developing cassette and develop the blot in the dark.

      • e. Expose the blot to the film at three time points, starting with 15 s. Determine the other two time points based on the strength of the signal in the 15 s exposure.

    9. #Scan film and quantify band intensity using densitometric analysis software.

    10. Repeat independently two additional times.

Deliverables

  • Data to be collected:

    1. Images of probed membranes (images of full films with molecular weight ladders).

    2. Scanned image of Ponceau-stained membranes after protein transfer.

    3. Quantified signal intensities and bar graphs of mean signal intensities normalized for β-tubulin loading and total pan-protein levels.

Confirmatory analysis plan

  • Statistical analysis of the Replication Data:

    1. For each cell line compare the following normalized phosphorylated kinase levels of primary kinase inhibitor alone, primary kinase inhibitor + ligand, and primary kinase inhibitor + ligand + secondary kinase inhibitor.

      • • One-way ANOVA.

      • • Note: at the time of analysis, we will generate a histogram of all the data to determine if it follows a Gaussian distribution or not. If it is skewed, we will perform the appropriate transformation in order to proceed with the proposed statistical analysis.

  • Meta-analysis of original and replication attempt effect sizes:

    1. We will plot the replication data (mean and 95% confidence interval) and will include the original data point, calculated directly from the representative image in Figure 2C, as a single point on the same plot for comparison.

Known differences from the original study

  • We are including three additional control conditions;

    1. Media alone.

      • i. To provide a baseline.

    2. Treatment of the cells with the secondary kinase inhibitor alone.

      • i. To assess any effects, the secondary kinase inhibitor may be independent of the ligand and primary kinase inhibitor.

    3. Treatment of a control cell line with the growth factor ligand alone.

      • i. To ensure the growth factor ligand is active.

        • FGF should cause phosphorylation of ERK1/2 in HL60 cells.

        • NRG1 should cause phosphorylation of HER3 in MCF7 cells.

        • HGF should cause phosphorylation of MET in HEK293 cells.

  • The original authors recommended that the replicating lab follows a standard Western blot protocol.

Provisions for quality control

  • All data obtained from the experiment—raw data, data analysis, control data and quality control data—will be made publicly available, either in the published manuscript or as an open access dataset available on the Open Science Framework (https://osf.io/h0pnz/).

  • Cell lines will be validated by STR profiling and screened for mycoplasma contamination.

  • A lab from the Science Exchange network with extensive experience in conducting Western blot assays for phosphorylated proteins will perform these experiments.

Power Calculations

Protocol 1

The original data presented is qualitative (images of survival curves) and the authors were unable to share the raw data values with the RP:CB core team. To estimate original effect sizes, we determined approximate IC50 concentrations from the original survival curve images.

Summary of the original data.

A204 cells IC50
Sunitinib 0.05 μM
Sunitinib + FGF 2.5 μM
Sunitinib + FGF + PD173074 0.025 μM

• FGF induces resistance to Sunitinib.

• PD173074 blocks FGF-induced resistance to Sunitinib, restoring sensitivity.

M14 IC50
PLX4032 0.1 μM
PLX4032 + NRG1 0.2 μM
PLX4032 + NRG1 + Lapatinib 0.1 μM

• NRG1 induces partial resistance to PLX4032.

• Lapatinib blocks NRG1-induced resistance to PLX4032, restoring sensitivity.

KHM-3S IC50
Erlotinib 0.5 μM
Erlotinib + HGF >10 μM
Erlotinib + HGF + Crizotinib 0.3 μM

• HGF induces resistance to Erlotinib.

• Crizotinib blocks HGF-induced resistance to Erlotinib, restoring sensitivity.

We have calculated the projected sample size based on a variety of different possible levels of variance using a one-way ANOVA test with an alpha error of 0.05.

A204
Variance F (2, 6) ηP2 Effect size f Power Total sample size across all groups
2% 7273.6132 0.999588 49.25631 99.99% 6
15% 129.3087 0.977326 6.565316 99.99% 6
28% 37.1103 0.925206 3.517109 98.53% 6
40% 18.184 0.858384 2.461981 85.32% 6

For each percent variance, the relative standard deviation of the approximated IC50 was used to calculate the F statistic from a one-way ANOVA analysis, which was converted to ηP2 (the ratio of variance attributed to the effect and the effect plus its associate error variance from the ANOVA), and then used to determine the effect size (Cohen's f) and the needed sample size to obtain at least 80% power. The actual power obtained is listed.

M14
Variance F (2, 6) ηP2 Effect size f Power Total sample size across all groups
2% 1250 0.997606 20.4135 99.99% 6
15% 22.2222 0.881057 2.721652 90.90% 6
28% 6.3776 0.680089 1.458036 85.39% 9
40% 3.125 0.510204 1.020621 88.33% 15
KHM-S3
Variance F (2, 6) ηP2 Effect size f Power Total sample size across all groups
2% 6890.8212 0.999565 47.9359 99.99% 6
15% 122.5035 0.976096 6.390149 99.99% 6
28% 35.1573 0.921378 3.423315 98.12% 6
40% 17.2271 0.851684 2.396322 83.59% 6

In order to produce quantitative replication data, we will run the experiment three times. Each time we will quantify the IC50. We will determine the standard deviation of the IC50 across the three biological replicates and combine this with the means from the original study to simulate an effect size. Using this simulated effect size, we will then determine the number of replicates necessary to reach a power of at least 80%. We will then perform additional replicates, if required, to ensure that the experiment has more than 80% power to detect the original effect.

Protocol 2

The original data presented is qualitative (images of Western Blots). We used Image Studio Lite v. 4.0.21 (LICOR) to perform densitometric analysis of the presented bands to quantify the original effect size. Levels of phospho-protein were normalized to total protein and then normalized to the control.

Summary of original data.

A204 cells pPDGFR pAKT pERK pFRS2
Control 1 1 1 1
Sunitinib alone 0.264 0.0845 1.952 1.473
Sunitinib + FGF 0.337 0.092 5.350 8.069
Sunitinib + FGF + PD173074 0.304 0.071 0.369 1.013

• FGF activates pFRS2 and pERK in the presence of Sunitinib.

• PD173074 blocks FGF-induced pFRS2 and pERK activation.

M14 cells pHER3 pAKT pERK
Control 1 1 1
PLX4032 alone 0.3667 1.8645 0.0524
PLX4032 + NRG1 3.9447 11.211 0.0539
PLX4032 + NRG1 + Lapatinib 1.0666 1.7863 0.0571

• NRG1 activates pHER3 and pAKT in the presence of PLX4032.

• Lapatinib blocks NRG1-induced pHER3 and pAKT activation.

KHM-3S cells pEGFR pAKT pERK pMET
Control 1 1 1 1
Erlotinib alone 0.008 0.609 0.18 1.098
Erlotinib + HGF 0.014 1.381 0.979 11.66
Erlotinib + HGF + Crizotinib 0.023 0.417 0.085 1.095

• HGF activates pMET and pERK in the presence of Erlotinib.

• Crizotinib blocks HGF-induced pMET and pERK activation.

We have calculated the projected sample size based on a variety of different possible levels of variance (Koller and Wätzig, 2005) using a one-way ANOVA test with an alpha error of 0.05.

  • These power calculations were performed with G*Power software, version 3.1.7 (Faul et al., 2007).

  • The F statistic was calculated at http://statpages.org/anova1sm.html.

  • The ηP2 was calculated using the formula on the spreadsheet accessed from Lakens and colleagues (Lakens, 2013).

A204 cells
2% Variance pPDGFR pAKT pERK pFRS2
F(3, 8) 2884.5133 6189.0064 4400.8341 5183.0738
ηp² 0.999076377 0.999569314 0.999394421 0.999485769
Effect size f 32.8891 48.17548 40.62403 44.08686
Power 99.99% 99.99% 99.99% 99.99%
Total sample size across all groups 8 8 8 8
15% variance pPDGFR pAKT pERK pFRS2
F(3, 8) 51.28023644 110.0267804 78.23705067 92.14353422
ηp² 0.950568679 0.976336986 0.967039009 0.971873631
Effect size f 4.385212 6.423398 5.416539 5.87825
Power 99.99% 99.99% 99.99% 99.99%
Total sample size across all groups 8 8 8 8
28% variance pPDGFR pAKT pERK pFRS2
F(3, 8) 14.71690459 31.57656327 22.4532352 26.44425408
ηp² 0.846598456 0.922125726 0.893842473 0.908396348
Effect size f 2.349221 3.441106 2.901717 3.149063
Power 91.97% 99.79% 98.43% 99.35%
Total sample size 8 8 8 8
40% variance pPDGFR pAKT pERK pFRS2
F(3, 8) 7.21128325 15.472516 11.00208525 12.9576845
ηp² 0.73003845 0.852988598 0.804907816 0.829326246
Effect size f 1.644455 2.408774 2.031202 2.204344
Power 96.95% 93.12% 83.18% 88.55%
Total sample size across all groups 12 8 8 8

For each percent variance, the relative standard deviation of the approximated phospho-protein level was used to calculate the F statistic from a one-way ANOVA analysis, which was converted to ηP2 (the ratio of variance attributed to the effect and the effect plus its associated error variance from the ANOVA), and then used to determine the effect size (Cohen's f) and the needed sample size to obtain at least 80% power. The actual power obtained is listed.

M14 cells
2% Variance pHER3 pAKT pERK
F(3, 8) 4297.4601 5283.2994 6645.7378
ηp² 0.999379863 0.99949552 0.999598901
Effect size f 40.14408 44.51111 49.92144
Power 99.99% 99.99% 99.99%
Total sample size across all groups 8 8 8
15% variance pHER3 pAKT pERK
F(3, 8) 76.39929067 93.92532267 118.1464498
ηp² 0.966272885 0.972392466 0.977927341
Effect size f 5.352545 5.934812 6.656194
Power 99.99% 99.99% 99.99%
Total sample size across all groups 8 8 8
28% variance pHER3 pAKT pERK
F(3, 8) 21.92581684 26.95560918 33.90682551
ηp² 0.891565784 0.909977657 0.927087448
Effect size f 2.867435 3.179364 3.565818
Power 98.24% 99.42% 99.88%
Total sample size 8 8 8
40% variance pHER3 pAKT pERK
F(3, 8) 10.74365025 13.2082485 16.6143445
ηp² 0.801148125 0.8320201 0.861694667
Effect size f 2.007204 2.225555 2.496073
Power 82.32% 89.11% 94.57%
Total sample size across all groups 8 8 8
KHM-S3 cells
2% Variance pEGFR pAKT pERK pMET
F(3, 8) 7271.894 1594.1561 3697.7822 6041.5258
ηp² 0.999633426 0.998330017 0.999279367 0.999558805
Effect size f 52.22032 24.45012 37.238 47.59802
Power 99.99% 99.99% 99.99% 99.99%
Total sample size across all groups 8 8 8 8
15% variance pEGFR pAKT pERK pMET
F(3, 8) 129.2781156 28.34055289 65.73835022 107.4049031
ηp² 0.979789525 0.913998523 0.961016505 0.975773338
Effect size f 6.962707 3.260016 4.965066 6.346404
Power 99.99% 99.57% 99.99% 99.99%
Total sample size across all groups 8 8 8 8
28% variance pEGFR pAKT pERK pMET
F(3, 8) 37.1015 8.13344949 18.86623571 30.82411122
ηp² 0.932944692 0.753089075 0.876158512 0.920376091
Effect size f 3.730022 1.746437 2.659857 3.399859
Power 99.94% 98.31% 96.62% 99.75%
Total sample size across all groups 8 12 8 8
40% variance pEGFR pAKT pERK pMET
F(3, 8) 18.179735 3.98539025 9.2444555 15.1038145
ηp² 0.872080242 0.59912149 0.776119611 0.84993841
Effect size f 2.611015 1.222506 1.8619 2.379901
Power 96.09% 94.83% 99.19% 92.58%
Total sample size across all groups 8 16 12 8

In order to produce quantitative replication data, we will run the experiment three times. Each time we will quantify band intensity. We will determine the standard deviation of band intensity across the three biological replicates and combine this with the mean from the original study to simulate the original effect size. We will use this simulated effect size to determine the number of replicates necessary to reach a power of at least 80%. We will then perform additional replicates, if required, to ensure that the experiment has more than 80% power to detect the original effect.

Acknowledgements

The Reproducibility Project: Cancer Biology core team would like to thank the original authors, in particular Dr Jeff Settleman, for generously sharing critical information to ensure the fidelity and quality of this replication attempt. We would also like to thank the following companies for generously donating reagents to the Reproducibility Project: Cancer Biology: American Type Culture Collection (ATCC), BioLegend, Charles River Laboratories, Corning Incorporated, DDC Medical, EMD Millipore, Harlan Laboratories, LI-COR Biosciences, Mirus Bio, Novus Biologicals, and Sigma-Aldrich.

Funding Statement

The Reproducibility Project: Cancer Biology is funded by the Laura and John Arnold Foundation, provided to the Center for Open Science in collaboration with Science Exchange. The funder had no role in study design or the decision to submit the work for publication.

Footnotes

Wilson TR, Fridlyand J, Yan Y, Penuel E, Burton L, Chan E, Peng J, Lin E, Wang Y, Sosman J, Ribas A, Li J, Moffat J, Sutherlin DP, Koeppen H, Merchant M, Neve R, Settleman J. 26July2012. Widespread potential for growth-factor-driven resistance to anticancer kinase inhibitors. Nature 3:505–509. doi: 10.1038/nature11249.

Contributor Information

Joan Massagué, Memorial Sloan-Kettering Cancer Center, United States.

Elizabeth Iorns, Science Exchange, Palo Alto, United States.

William Gunn, Mendeley, London, United Kingdom.

Fraser Tan, Science Exchange, Palo Alto, United States.

Joelle Lomax, Science Exchange, Palo Alto, United States.

Timothy Errington, Center for Open Science, Charlottesville, United States.

Funding Information

This paper was supported by the following grant:

  • Laura and John Arnold Foundation to .

Additional information

Competing interests

EG: The Monoclonal Antibody Core Facility is a Science Exchange associated laboratory.

RP:CB: EI, FT and JL are employed and holds shares in Science Exchange Inc.

The other authors declare that no competing interests exist.

Author contributions

EG, Drafting or revising the article.

EG, Drafting or revising the article.

RP:CB, Conception and design, Drafting or revising the article.

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eLife. 2014 Dec 10;3:e04037. doi: 10.7554/eLife.04037.002

Decision letter

Editor: Joan Massagué1

eLife posts the editorial decision letter and author response on a selection of the published articles (subject to the approval of the authors). An edited version of the letter sent to the authors after peer review is shown, indicating the substantive concerns or comments; minor concerns are not usually shown. Reviewers have the opportunity to discuss the decision before the letter is sent (see review process). Similarly, the author response typically shows only responses to the major concerns raised by the reviewers.

Thank you for sending your work entitled “Registered report: Widespread potential for growth-factor-driven resistance to anticancer kinase inhibitors” for consideration at eLife. Your article has been favorably evaluated by Tony Hunter (Senior editor) and 3 reviewers, one of whom is a member of our Board of Reviewing Editors.

The Reviewing editor and the other reviewers discussed their comments before we reached this decision, and the Reviewing editor has assembled the following comments to help you prepare a revised submission.

1) The experimental design to test the reproducibility of Wilson et al. (2012) is thorough and well-articulated, with some exceptions. First, it will be important to perform positive controls to assess the performance of the growth factors or the kinase inhibitors that will be used.

2) Second, given that the western blots in the original manuscript are not quantified and that quantification is derived from the published work, the authors should describe how they are going to determine whether the data are “reproducible” or not.

3) Third, it is not immediately clear whether the distribution of the data (IC50 for Protocol 1 and band intensity for Protocol 2) will exhibit any skew. Therefore, at the time of analysis, it may be useful to plot histograms of the data to examine their distributions, and, if necessary, consider suitable transformations (for example, the Box–Cox family of transformations) of the data to obtain (approximately) symmetric distributions so that the testing procedures are valid.

4) Lastly, the authors should either include or explain the reason for excluding in the replication study the role of HGF-MET signaling in resistance to BRAF inhibition that was observed in some melanomas in the original study and other reports.

eLife. 2014 Dec 10;3:e04037. doi: 10.7554/eLife.04037.003

Author response


1) The experimental design to test the reproducibility of Wilson et al (2012) is thorough and well-articulated, with some exceptions. First, it will be important to perform positive controls to assess the performance of the growth factors or the kinase inhibitors that will be used.

We agree that verifying the activity of the reagents prior to their use in our experiments is an important step. We have three classes of reagent: primary RTK inhibitors, growth factor ligands, and secondary RTK inhibitors. Each cohort includes a positive control where the cell line of interest is treated solely with its cognate primary RTK inhibitor. This should demonstrate that the drug is active as anticipated, and the quality control data (for both primary and secondary RTK inhibitors) provided by the manufacturers will be included in the materials publicly available through the Open Science Framework. However, as indicated by the reviewers, there is known lot-to-lot variation in growth factors, so we have added steps to test the growth factors we are using for activity. In Protocol 2, we have added in additional cell lines that have a known response to treatment with the ligand alone, as evidenced by phosphorylation of downstream targets. We will treat these positive control cell lines with the growth factors and assess phosphorylation of their cognate target by Western blot. The manuscript has been updated to reflect this additional work.

2) Second, given that the western blots in the original manuscript are not quantified and that quantification is derived from the published work, the authors should describe how they are going to determine whether the data are “reproducible” or not.

We will present both the original data and replication data for side-by-side comparison. We will plot the mean value of our replication data along with the 95% confidence interval. We will then include the original data point (IC50 or quantified Western blot band intensity) on the same plot to demonstrate if the original data falls within the 95% confidence interval of the replication data. We have also updated the language of the manuscript to reflect this change.

3) Third, it is not immediately clear whether the distribution of the data (IC50 for Protocol 1 and band intensity for Protocol 2) will exhibit any skew. Therefore, at the time of analysis, it may be useful to plot histograms of the data to examine their distributions, and, if necessary, consider suitable transformations (for example, the Box–Cox family of transformations) of the data to obtain (approximately) symmetric distributions so that the testing procedures are valid.

Thank you for this suggestion. At the time of analysis, we will generate a histogram of all the data to determine if it follows a Gaussian distribution or not. If it is skewed, we will perform the appropriate transformation in order to proceed with the proposed statistical analysis. We will note any changes or transformations made. We have also updated the manuscript to address this point.

4) Lastly, the authors should either include or explain the reason for excluding in the replication study the role of HGF-MET signaling in resistance to BRAF inhibition that was observed in some melanomas in the original study and other reports.

We agree that all of the experiments included in the original study are important, and choosing which experiments to replicate has been one of the great challenges of this project. In this case, the RP:CB core team felt that the most impactful information in Wilson et al., 2012 was that bypassing RTK inhibition by ligand-mediated activation of parallel signaling pathways was a mechanism applicable to many different types of cancer, each with its own constellation of addictive mutations and cognate inhibitors. The experiments addressing the role of HGF in activating MET signaling to bypass EGFR inhibition provide a more detailed exploration of this mechanism in one specific cancer type scenario, and support the larger conclusion drawn from the experiments we chose for replication. As such, we will restrict our analysis to the experiments being replicated and will not include discussion of experiments not being replicated in this study.


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