Literature DB >> 31950132

Deep learning for drug response prediction in cancer.

Delora Baptista1, Pedro G Ferreira2, Miguel Rocha3.   

Abstract

Predicting the sensitivity of tumors to specific anti-cancer treatments is a challenge of paramount importance for precision medicine. Machine learning(ML) algorithms can be trained on high-throughput screening data to develop models that are able to predict the response of cancer cell lines and patients to novel drugs or drug combinations. Deep learning (DL) refers to a distinct class of ML algorithms that have achieved top-level performance in a variety of fields, including drug discovery. These types of models have unique characteristics that may make them more suitable for the complex task of modeling drug response based on both biological and chemical data, but the application of DL to drug response prediction has been unexplored until very recently. The few studies that have been published have shown promising results, and the use of DL for drug response prediction is beginning to attract greater interest from researchers in the field. In this article, we critically review recently published studies that have employed DL methods to predict drug response in cancer cell lines. We also provide a brief description of DL and the main types of architectures that have been used in these studies. Additionally, we present a selection of publicly available drug screening data resources that can be used to develop drug response prediction models. Finally, we also address the limitations of these approaches and provide a discussion on possible paths for further improvement. Contact:  mrocha@di.uminho.pt. © The authors 2020. Published by Oxford University Press.

Entities:  

Keywords:  cancer; deep learning; drug sensitivity; drug synergy; precision medicine

Year:  2021        PMID: 31950132     DOI: 10.1093/bib/bbz171

Source DB:  PubMed          Journal:  Brief Bioinform        ISSN: 1467-5463            Impact factor:   11.622


  16 in total

1.  NeRD: a multichannel neural network to predict cellular response of drugs by integrating multidimensional data.

Authors:  Xiaoxiao Cheng; Chong Dai; Yuqi Wen; Xiaoqi Wang; Xiaochen Bo; Song He; Shaoliang Peng
Journal:  BMC Med       Date:  2022-10-17       Impact factor: 11.150

2.  Predicting Drug Response and Synergy Using a Deep Learning Model of Human Cancer Cells.

Authors:  Brent M Kuenzi; Jisoo Park; Samson H Fong; Kyle S Sanchez; John Lee; Jason F Kreisberg; Jianzhu Ma; Trey Ideker
Journal:  Cancer Cell       Date:  2020-10-22       Impact factor: 31.743

3.  DeepCNV: a deep learning approach for authenticating copy number variations.

Authors:  Joseph T Glessner; Xiurui Hou; Cheng Zhong; Jie Zhang; Munir Khan; Fabian Brand; Peter Krawitz; Patrick M A Sleiman; Hakon Hakonarson; Zhi Wei
Journal:  Brief Bioinform       Date:  2021-09-02       Impact factor: 11.622

4.  RadSigBench: a framework for benchmarking functional genomics signatures of cancer cell radiosensitivity.

Authors:  John D O'Connor; Ian M Overton; Stephen J McMahon
Journal:  Brief Bioinform       Date:  2022-03-10       Impact factor: 11.622

5.  Machine learning methods, databases and tools for drug combination prediction.

Authors:  Lianlian Wu; Yuqi Wen; Dongjin Leng; Qinglong Zhang; Chong Dai; Zhongming Wang; Ziqi Liu; Bowei Yan; Yixin Zhang; Jing Wang; Song He; Xiaochen Bo
Journal:  Brief Bioinform       Date:  2022-01-17       Impact factor: 11.622

6.  A cross-study analysis of drug response prediction in cancer cell lines.

Authors:  Fangfang Xia; Jonathan Allen; Prasanna Balaprakash; Thomas Brettin; Cristina Garcia-Cardona; Austin Clyde; Judith Cohn; James Doroshow; Xiaotian Duan; Veronika Dubinkina; Yvonne Evrard; Ya Ju Fan; Jason Gans; Stewart He; Pinyi Lu; Sergei Maslov; Alexander Partin; Maulik Shukla; Eric Stahlberg; Justin M Wozniak; Hyunseung Yoo; George Zaki; Yitan Zhu; Rick Stevens
Journal:  Brief Bioinform       Date:  2022-01-17       Impact factor: 11.622

7.  Matching anticancer compounds and tumor cell lines by neural networks with ranking loss.

Authors:  Paul Prasse; Pascal Iversen; Matthias Lienhard; Kristina Thedinga; Chris Bauer; Ralf Herwig; Tobias Scheffer
Journal:  NAR Genom Bioinform       Date:  2022-01-14

8.  DRIM: A Web-Based System for Investigating Drug Response at the Molecular Level by Condition-Specific Multi-Omics Data Integration.

Authors:  Minsik Oh; Sungjoon Park; Sangseon Lee; Dohoon Lee; Sangsoo Lim; Dabin Jeong; Kyuri Jo; Inuk Jung; Sun Kim
Journal:  Front Genet       Date:  2020-11-12       Impact factor: 4.599

Review 9.  The Application of Deep Convolutional Neural Networks to Brain Cancer Images: A Survey.

Authors:  Amin Zadeh Shirazi; Eric Fornaciari; Mark D McDonnell; Mahdi Yaghoobi; Yesenia Cevallos; Luis Tello-Oquendo; Deysi Inca; Guillermo A Gomez
Journal:  J Pers Med       Date:  2020-11-12

10.  Ensemble transfer learning for the prediction of anti-cancer drug response.

Authors:  Yitan Zhu; Thomas Brettin; Yvonne A Evrard; Alexander Partin; Fangfang Xia; Maulik Shukla; Hyunseung Yoo; James H Doroshow; Rick L Stevens
Journal:  Sci Rep       Date:  2020-10-22       Impact factor: 4.996

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