Literature DB >> 34157173

Identification of Somatic Gene Signatures in Circulating Cell-Free DNA Associated with Disease Progression in Metastatic Prostate Cancer by a Novel Machine Learning Platform.

Edwin Lin1,2, Andrew W Hahn3, Roberto H Nussenzveig1, Sergiusz Wesolowski2, Nicolas Sayegh1, Benjamin L Maughan1, Taylor McFarland1, Nityam Rathi1, Deepika Sirohi1, Guru Sonpavde4, Umang Swami1, Manish Kohli1, Thereasa Rich5, Oliver Sartor6, Mark Yandell2, Neeraj Agarwal1.   

Abstract

PURPOSE: Progression from metastatic castration-sensitive prostate cancer (mCSPC) to a castration-resistant (mCRPC) state heralds the lethal phenotype of prostate cancer. Identifying genomic alterations associated with mCRPC may help find new targets for drug development. In the majority of patients, obtaining a tumor biopsy is challenging because of the predominance of bone-only metastasis. In this study, we hypothesize that machine learning (ML) algorithms can identify clinically relevant patterns of genomic alterations (GAs) that distinguish mCRPC from mCSPC, as assessed by next-generation sequencing (NGS) of circulating cell-free DNA (cfDNA). EXPERIMENTAL
DESIGN: Retrospective clinical data from men with metastatic prostate cancer were collected. Men with NGS of cfDNA performed at a Clinical Laboratory Improvement Amendments (CLIA)-certified laboratory at time of diagnosis of mCSPC or mCRPC were included. A combination of supervised and unsupervised ML algorithms was used to obtain biologically interpretable, potentially actionable insights into genomic signatures that distinguish mCRPC from mCSPC.
RESULTS: GAs that distinguish patients with mCRPC (n = 187) from patients with mCSPC (n = 154) (positive predictive value = 94%, specificity = 91%) were identified using supervised ML algorithms. These GAs, primarily amplifications, corresponded to androgen receptor, Mitogen-activated protein kinase (MAPK) signaling, Phosphoinositide 3-kinase (PI3K) signaling, G1/S cell cycle, and receptor tyrosine kinases. We also identified recurrent patterns of gene- and pathway-level alterations associated with mCRPC by using Bayesian networks, an unsupervised machine learning algorithm.
CONCLUSION: These results provide clinical evidence that progression from mCSPC to mCRPC is associated with stereotyped concomitant gain-of-function aberrations in these pathways. Furthermore, detection of these aberrations in cfDNA may overcome the challenges associated with obtaining tumor bone biopsies and allow contemporary investigation of combinatorial therapies that target these aberrations. IMPLICATIONS FOR PRACTICE: The progression from castration-sensitive to castration-resistant prostate cancer is characterized by worse prognosis and there is a pressing need for targeted drugs to prevent or delay this transition. This study used machine learning algorithms to examine the cell-free DNA of patients to identify alterations to specific pathways and genes associated with progression. Detection of these alterations in cell-free DNA may overcome the challenges associated with obtaining tumor bone biopsies and allow contemporary investigation of combinatorial therapies that target these aberrations.
© 2021 AlphaMed Press.

Entities:  

Keywords:  Castration-resistant; Castration-sensitive; Cell-free DNA; Genomics; Machine learning; Metastatic prostate cancer; Next-generation sequencing

Year:  2021        PMID: 34157173     DOI: 10.1002/onco.13869

Source DB:  PubMed          Journal:  Oncologist        ISSN: 1083-7159


  3 in total

1.  Genomic landscape of advanced prostate cancer patients with BRCA1 versus BRCA2 mutations as detected by comprehensive genomic profiling of cell-free DNA.

Authors:  Umang Swami; Raquel Mae Zimmerman; Roberto H Nussenzveig; Edgar Javier Hernandez; Yeonjung Jo; Nicolas Sayegh; Sergiusz Wesolowski; Lesli A Kiedrowski; Pedro C Barata; Gordon Howard Lemmon; Mehmet A Bilen; Elisabeth I Heath; Lakshminarayan Nandagopal; Hani M Babiker; Sumanta K Pal; Michael Lilly; Benjamin L Maughan; Benjamin Haaland; Mark Yandell; Oliver Sartor; Neeraj Agarwal
Journal:  Front Oncol       Date:  2022-09-15       Impact factor: 5.738

2.  Comprehensive Genomic Profiling of Cell-Free DNA in Men With Advanced Prostate Cancer: Differences in Genomic Landscape Based on Race.

Authors:  Raquel Zimmerman; Mehmet A Bilen; Elisabeth I Heath; Lakshminarayanan Nandagopal; Umang Swami; Adam Kessel; Ellen Jaeger; Sergiusz Wesolowski; Edgar J Hernanadez; Jonathan Chipman; Alleda Mack; Deepak Ravindranathan; Benjamin L Maughan; Roberto Nussenzveig; Mark Yandell; Manish Kohli; Michael B Lilly; A Oliver Sartor; Neeraj Agarwal; Pedro C Barata
Journal:  Oncologist       Date:  2022-10-01       Impact factor: 5.837

3.  Application of Circulating Tumor Cells and Circulating Free DNA from Peripheral Blood in the Prognosis of Advanced Gastric Cancer.

Authors:  Pengjie Yu; Shengmao Zhu; Yushuang Luo; Ganggang Li; Yongqiang Pu; Baojia Cai; Chengwu Zhang
Journal:  J Oncol       Date:  2022-01-11       Impact factor: 4.375

  3 in total

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