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Tsai and De Morais et al Supplementary Figure S1: The ratio of CDKN2A/CCND1 reflects Rb functional and genetic status and distinguishes small cell carcinoma from prostatic adenocarcinoma in publicly available data from patient derived xenografts (PDX). (A) Gene expression data from Vancouver Prostate Centre PDX (1) demonstrates that high CDKN2A/CCND1 correlates with a previously described functional Rb loss gene expression score. The highest scoring tumors on both scores are predominantly neuroendocrine carcinomas (NE) with RB1 homozygous loss, while the adenocarcinomas (AdCa) show generally lower CDKN2A/CCND1 scores. One adenocarcinoma xenograft, #331, shows hemizygous RB1 loss with a non-frameshift indel mutation in the second allele and has a higher CDKN2A/CCND1 score. Of note, this adenocarcinoma reliably transdifferentiates to a neuroendocrine carcinoma (sample #331R) when deprived of androgen (1). (B) Low CCND1 expression is present among neuroendocrine xenografts with RB1 inactivation and in the transdifferentiation adenocarcinoma #331. Of note, the neuroendocrine xenografts (#370 and #352), derived from the same patient, have a known deletion of CDKN2A (2), leading to unusually low CDKN2A message levels compared to all other samples. CDKN2A expression is relatively high in the neuroendocrine/adenocarcinoma samples #331 and #331R with RB1 inactivation. (C) Gene expression data from MD Anderson PDX (3) demonstrates that high CDKN2A/CCND1 correlates with a previously described functional Rb loss gene expression score. The highest scoring xenografts on both scores are small cell (SCPC) and large cell (LCNEC) neuroendocrine carcinomas, while the adenocarcinomas (AdCa) show generally lower CDKN2A/CCND1 scores. (D) CCND1 and CDKN2A expression levels demonstrate higher CDKN2A and lower CCND1 expression among small cell carcinoma xenografts in general compared to adenocarcinoma xenografts. Supplementary Figure S2: The ratio of CDKN2A/CCND1 is not as tightly correlated with Rb functional and genetic status in publicly available data from castate resistant prostate cancer (CRPC) metastases in rapid autopsy cohort. (A) Gene expression data from the Michigan rapid autopsy cohort (4) demonstrates a weaker correlation between Rb functional loss gene expression score and CDKN2A/CCND1 expression levels. Of note, multiple non-small cell CRPC samples with homozygous RB1 loss have low Rb functional loss scores and CDKN2A/CCND1 ratios. The two small cell carcinoma metastatic samples (SC, #22 and 24) score among the highest on both metrics, but cluster with a number of non-small cell CRPC samples (#11, 32, 25). (B) CCND1 and CDKN2A expression levels demonstrate higher CDKN2A and lower CCND1 expression among small cell carcinoma cases (#22 and 24) compared to most non-small cell CRPC cases (with the exception of #11, 32, 25, as described in A). Supplementary Figure S3: Short-term and neo-adjuvant androgen deprivation therapy (ADT) has not exhibited direct effects on CCND1, CDKN2A, or RB1 in past gene expression studies of prostatic adenocarcinomas. (A) For in vitro LNCaP cells undergoing short-term androgen deprivation alone or followed by dihydrotestosterone (DHT) stimulation (5), expression levels of CCND1, CDKN2A, and RB1 were relatively unchanged while Rb functional loss score decreased. Known androgen-regulated genes KLK3 and TMPRSS2 are shown for comparison. 1 Tsai and De Morais et al Percentages listed (%) refer to the proportion of genes (out of 19764 sampled by the microarray) with greater or equal change (in total sum absolute value) under the experimental conditions. For example, 72% of genes change as much or more than CCND1 under androgen modulation, with KLK3 changing the most. (B) For 7 patients with locally advanced or metastatic prostate cancer from the GenTax study, CCND1, CDKN2A, and RB1 were not significantly changed by ADT in RNA-seq data from biopsies both before and 22 weeks after initiation of ADT (6). Rb loss scores decreased slightly for each patient. Graphs are based on counts per million and FDR-adjusted pvalues computed with the edgeR package (6, 13). Supplementary Figure S4: A high ratio of CDKN2A/CCND1 is associated with shorter interval to development of metastasis among high risk surgically treated men receiving adjuvant androgen deprivation therapy (ADT). (A) CCND1 and CDKN2A expression levels are inversely correlated in high risk adenocarcinoma samples. (B) A high ratio of CDKN2A/CCND1 (top tertile of expression) is associated with more rapid metastasis among men who were treated with adjuvant ADT, but not in men who did not receive ADT. This association is largely driven by low CCND1 levels (see Figure 4) as high CDKN2A is not associated with more rapid metastasis. Supplementary Methods: Gene expression and copy number analysis of public datasets: Public microarray or RNA-seq datasets GSE19445, GSE32967, GSE35988, GSE41193 and GSE48403 were downloaded from Gene Expression Omnibus (GEO). Affymetrix Human Genome Plus 2.0 Array data (GSE32967, MD Anderson PDX, Fig S1 and GSE19445, LNCaP, Fig S3) was pre-processed by Robust Multi-array Average (RMA) algorithm for background-correction, normalization, and summarization (7), using the Bioconductor package affyPLM and with gene summarizations based on the ENTREZG custom CDF from the Brainarray project. Agilent 44K Whole Human Genome Microarray data (GSE35988, Michigan autopsy, Fig S2) was processed as described in the Methods relying on the Bioconductor limma package (8), followed by batch correction using the ComBat software package (9) to account for the array used (1x44 or 4x44). For this dataset, only samples with previously reported RB1 copy number calls were included (10). Agilent 60K SurePrint G3 Human Gene Expression Microarray data (GSE41193, Vancouver PDX, Fig S1) was processed similarly, except for skipping the Loess normalization step, as this study was performed by single-color labeling. Data for most biological replicate samples in this dataset were excluded. Agilent SurePrint G3 Human CGH Microarray data (GSE41193, Vancouver PDX, Fig S1) was normalized by population-based intensity-based Lowess using the software package popLowess (11). Circular binary segmentation and evaluation of copy number calls was then performed using the Bioconductor package CGHcall (12, 13). Mapped RNA-seq count data (GSE48403) was analyzed by the edgeR package as described in (6) to detect differential expression in a matched-pairs design through a generalized linear model (14, 15). 2 Tsai and De Morais et al Supplementary References: 1. Lin D, Wyatt AW, Xue H, Wang Y, Dong X, Haegert A, et al. High fidelity patientderived xenografts for accelerating prostate cancer discovery and drug development. Cancer Res 2014;74(4):1272-83. 2. Collins CC, Volik SV, Lapuk AV, Wang Y, Gout PW, Wu C, et al. Next generation sequencing of prostate cancer from a patient identifies a deficiency of methylthioadenosine phosphorylase, an exploitable tumor target. Mol Cancer Ther 2012;11(3):775-83. 3. Tzelepi V, Zhang J, Lu JF, Kleb B, Wu G, Wan X, et al. Modeling a lethal prostate cancer variant with small-cell carcinoma features. Clin Cancer Res 2012;18(3):666-77. 4. Grasso CS, Wu YM, Robinson DR, Cao X, Dhanasekaran SM, Khan AP, et al. The mutational landscape of lethal castration-resistant prostate cancer. Nature 2012;487(7406):239-43. 5. Haffner MC, Aryee MJ, Toubaji A, Esopi DM, Albadine R, Gurel B, et al. Androgen-induced TOP2B-mediated double-strand breaks and prostate cancer gene rearrangements. Nat Genet 2010; 42(8):668-75. 6. Rajan P, Sudbery IM, Villasevil ME, Mui E, Fleming J, Davis M, et al. Nextgeneration sequencing of advanced prostate cancer treated with androgendeprivation therapy. Eur Urol. 2014; 66:32–39. 7. Izirray R, Bolstad B, Collin F, Cope L, Hobbs B, Speed T. Summaries of Affymetrix GeneChip probe level data. Nucleic Acids Research 2003;31(4):e15. 8. Smyth GK, Speed T. Normalization of cDNA microarray data. Methods 2003;31(4):265-73. 9. Johnson WE, Li C, Rabinovic A. Adjusting batch effects in microarray expression data using empirical bayes methods. Biostatistics 2007;8(1):118-27 10. Sharma A, Yeow WS, Ertel A, Coleman I, Clegg N, Thangavel C, et al. The retinoblastoma tumor suppressor controls androgen signaling and human prostate cancer progression. J Clin Invest 2010;120(12):4478-92. 11. Staaf J, Jonsson G, Ringner M, Vallon-Christersson J. Normalization of arrayCGH data: Influence of copy number imbalances. BMC Genomics 2007;8:382. 12. Olshen AB, Venkatraman ES, Lucito R, Wigler M. Circular binary segmentation for the analysis of array-based DNA copy number data. Biostatistics 2004;5(4):557-72. 13. van de Wiel MA, Kim KI, Vosse SJ, van Wieringen WN, Wilting SM, Ylstra B. CGHcall: Calling aberrations for array CGH tumor profiles. Bioinformatics 2007;23(7):892-4. 14. Robinson MD, McCarthy DJ, Smyth GK. edgeR: a Bioconductor package for differential expression analysis of digital gene expression data. Bioinformatics 2010; 26(1):139-40. 3 Tsai and De Morais et al 15. McCarthy DJ, Chen Y, Smyth GK. Differential expression analysis of multifactor RNA-Seq experiments with respect to biological variation. Nucleic Acids Res 2012; 40(10):4288-97. 4