Literature DB >> 33479700

Active learning effectively identifies a minimal set of maximally informative and asymptotically performant cytotoxic structure-activity patterns in NCI-60 cell lines.

Takumi Nakano1, Shunichi Takeda2, J B Brown1.   

Abstract

The NCI-60 cancer cell line screening panel has provided insights for development of subtype-specific chemical therapies and repurposing. By extracting chemical structure and cytotoxicity patterns, virtual screening potentially complements the availability of high-throughput assay platforms and improves bioactive compound discovery rates by computational prefiltering of candidate compound libraries. Many groups report high prediction performances in computational models of NCI-60 data when using cross-validation or similar techniques, yet prospective therapy development in novel cancers may have little to no such data and further may not have the resources to perform hit identification using large compound libraries. In contrast to bulk screening and analysis, the active learning methodology has demonstrated how to identify compounds for screening in small batches and update computational models iteratively, leading to predictive models with a minimum number of compounds, and importantly clarifying data volumes at which limits in predictive ability are achieved. Here, in replicate per-cell line experiments using 50% of data (∼20 000 compounds) as the external prediction target, predictive limits are reproducibly demonstrated at the stage of systematic selection of 10-30% of the incorporable half. The pattern was consistent across all 60 cell lines. Limits of predictability are found to be correlated to the doubling times of cell lines and the number of cellular response discontinuities (activity cliffs) present per cell line. Organization into chemical scaffolds delineated degrees of predictive challenge. These results provide key insights for strategies in developing new inhibitors in existing cell lines or for future automated therapy selection in personalized oncotherapy. This journal is © The Royal Society of Chemistry 2020.

Entities:  

Year:  2020        PMID: 33479700      PMCID: PMC7513593          DOI: 10.1039/d0md00110d

Source DB:  PubMed          Journal:  RSC Med Chem        ISSN: 2632-8682


  32 in total

1.  Predicting in vitro drug sensitivity using Random Forests.

Authors:  Gregory Riddick; Hua Song; Susie Ahn; Jennifer Walling; Diego Borges-Rivera; Wei Zhang; Howard A Fine
Journal:  Bioinformatics       Date:  2010-12-05       Impact factor: 6.937

2.  Predicting potent compounds via model-based global optimization.

Authors:  Mohsen Ahmadi; Martin Vogt; Preeti Iyer; Jürgen Bajorath; Holger Fröhlich
Journal:  J Chem Inf Model       Date:  2013-02-14       Impact factor: 4.956

Review 3.  Splenic marginal zone lymphoma: from genetics to management.

Authors:  Luca Arcaini; Davide Rossi; Marco Paulli
Journal:  Blood       Date:  2016-03-17       Impact factor: 22.113

4.  Combination of host immune metabolic biomarkers for the PD-1 blockade cancer immunotherapy.

Authors:  Ryusuke Hatae; Kenji Chamoto; Young Hak Kim; Kazuhiro Sonomura; Kei Taneishi; Shuji Kawaguchi; Hironori Yoshida; Hiroaki Ozasa; Yuichi Sakamori; Maryam Akrami; Sidonia Fagarasan; Izuru Masuda; Yasushi Okuno; Fumihiko Matsuda; Toyohiro Hirai; Tasuku Honjo
Journal:  JCI Insight       Date:  2020-01-30

5.  Safety and Antitumor Activity of Anti-PD-1 Antibody, Nivolumab, in Patients With Platinum-Resistant Ovarian Cancer.

Authors:  Junzo Hamanishi; Masaki Mandai; Takafumi Ikeda; Manabu Minami; Atsushi Kawaguchi; Toshinori Murayama; Masashi Kanai; Yukiko Mori; Shigemi Matsumoto; Shunsuke Chikuma; Noriomi Matsumura; Kaoru Abiko; Tsukasa Baba; Ken Yamaguchi; Akihiko Ueda; Yuko Hosoe; Satoshi Morita; Masayuki Yokode; Akira Shimizu; Tasuku Honjo; Ikuo Konishi
Journal:  J Clin Oncol       Date:  2015-09-08       Impact factor: 44.544

6.  Exome Sequencing Landscape Analysis in Ovarian Clear Cell Carcinoma Shed Light on Key Chromosomal Regions and Mutation Gene Networks.

Authors:  Ryusuke Murakami; Noriomi Matsumura; J B Brown; Koichiro Higasa; Takanobu Tsutsumi; Mayumi Kamada; Hisham Abou-Taleb; Yuko Hosoe; Sachiko Kitamura; Ken Yamaguchi; Kaoru Abiko; Junzo Hamanishi; Tsukasa Baba; Masafumi Koshiyama; Yasushi Okuno; Ryo Yamada; Fumihiko Matsuda; Ikuo Konishi; Masaki Mandai
Journal:  Am J Pathol       Date:  2017-09-06       Impact factor: 4.307

7.  Age-related remodelling of oesophageal epithelia by mutated cancer drivers.

Authors:  Akira Yokoyama; Nobuyuki Kakiuchi; Tetsuichi Yoshizato; Manabu Muto; Seishi Ogawa; Yasuhito Nannya; Hiromichi Suzuki; Yasuhide Takeuchi; Yusuke Shiozawa; Yusuke Sato; Kosuke Aoki; Soo Ki Kim; Yoichi Fujii; Kenichi Yoshida; Keisuke Kataoka; Masahiro M Nakagawa; Yoshikage Inoue; Tomonori Hirano; Yuichi Shiraishi; Kenichi Chiba; Hiroko Tanaka; Masashi Sanada; Yoshitaka Nishikawa; Yusuke Amanuma; Shinya Ohashi; Ikuo Aoyama; Takahiro Horimatsu; Shin'ichi Miyamoto; Shigeru Tsunoda; Yoshiharu Sakai; Maiko Narahara; J B Brown; Yoshitaka Sato; Genta Sawada; Koshi Mimori; Sachiko Minamiguchi; Hironori Haga; Hiroshi Seno; Satoru Miyano; Hideki Makishima
Journal:  Nature       Date:  2019-01-02       Impact factor: 49.962

8.  Efficient discovery of responses of proteins to compounds using active learning.

Authors:  Joshua D Kangas; Armaghan W Naik; Robert F Murphy
Journal:  BMC Bioinformatics       Date:  2014-05-16       Impact factor: 3.169

9.  PubChem 2019 update: improved access to chemical data.

Authors:  Sunghwan Kim; Jie Chen; Tiejun Cheng; Asta Gindulyte; Jia He; Siqian He; Qingliang Li; Benjamin A Shoemaker; Paul A Thiessen; Bo Yu; Leonid Zaslavsky; Jian Zhang; Evan E Bolton
Journal:  Nucleic Acids Res       Date:  2019-01-08       Impact factor: 16.971

Review 10.  SciPy 1.0: fundamental algorithms for scientific computing in Python.

Authors:  Pauli Virtanen; Ralf Gommers; Travis E Oliphant; Matt Haberland; Tyler Reddy; David Cournapeau; Evgeni Burovski; Pearu Peterson; Warren Weckesser; Jonathan Bright; Stéfan J van der Walt; Matthew Brett; Joshua Wilson; K Jarrod Millman; Nikolay Mayorov; Andrew R J Nelson; Eric Jones; Robert Kern; Eric Larson; C J Carey; İlhan Polat; Yu Feng; Eric W Moore; Jake VanderPlas; Denis Laxalde; Josef Perktold; Robert Cimrman; Ian Henriksen; E A Quintero; Charles R Harris; Anne M Archibald; Antônio H Ribeiro; Fabian Pedregosa; Paul van Mulbregt
Journal:  Nat Methods       Date:  2020-02-03       Impact factor: 28.547

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