Literature DB >> 30771879

Clinical intelligence: New machine learning techniques for predicting clinical drug response.

Turki Turki1, Jason T L Wang2.   

Abstract

Predicting the response, or sensitivity, of a clinical drug to a specific cancer type is an important research problem. By predicting the clinical drug response correctly, clinicians are able to understand patient-to-patient differences in drug sensitivity outcomes, which in turn results in lesser time spent and lower cost associated with identifying effective drug candidates. Although technological advances in high-throughput drug screening in cells led to the generation of a substantial amount of relevant data, the analysis of such data would be a challenging task. There is a critical need for advanced machine learning (ML) algorithms to generate accurate predictions of clinical drug response. A major goal of this work is to provide advanced ML tools to data analysts, who would in turn build prediction calculators to be incorporated into intelligent clinical decision support systems. Such innovative tools could be used to enhance patient-care, among other uses. To achieve this goal, we develop new ML techniques, including a transfer learning approach coupled with or without a boosting technique. Experimental results on real clinical data pertaining to breast cancer, multiple myeloma, and triple-negative cancer patients demonstrate the effectiveness and superiority of the proposed approaches compared to baseline approaches, including existing transfer learning methods.
Copyright © 2019 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Applications in biology and medicine; Drug discovery; Drug sensitivity; Machine learning; Transfer learning

Mesh:

Substances:

Year:  2019        PMID: 30771879     DOI: 10.1016/j.compbiomed.2018.12.017

Source DB:  PubMed          Journal:  Comput Biol Med        ISSN: 0010-4825            Impact factor:   4.589


  5 in total

1.  Machine learning predicts treatment sensitivity in multiple myeloma based on molecular and clinical information coupled with drug response.

Authors:  Lucas Venezian Povoa; Carlos Henrique Costa Ribeiro; Israel Tojal da Silva
Journal:  PLoS One       Date:  2021-07-28       Impact factor: 3.240

Review 2.  Representation of molecules for drug response prediction.

Authors:  Xin An; Xi Chen; Daiyao Yi; Hongyang Li; Yuanfang Guan
Journal:  Brief Bioinform       Date:  2022-01-17       Impact factor: 13.994

3.  Cancer gene expression profiles associated with clinical outcomes to chemotherapy treatments.

Authors:  Nicolas Borisov; Maxim Sorokin; Victor Tkachev; Andrew Garazha; Anton Buzdin
Journal:  BMC Med Genomics       Date:  2020-09-18       Impact factor: 3.063

4.  Machine Learning Applicability for Classification of PAD/VCD Chemotherapy Response Using 53 Multiple Myeloma RNA Sequencing Profiles.

Authors:  Nicolas Borisov; Anna Sergeeva; Maria Suntsova; Mikhail Raevskiy; Nurshat Gaifullin; Larisa Mendeleeva; Alexander Gudkov; Maria Nareiko; Andrew Garazha; Victor Tkachev; Xinmin Li; Maxim Sorokin; Vadim Surin; Anton Buzdin
Journal:  Front Oncol       Date:  2021-04-15       Impact factor: 6.244

5.  Flexible Data Trimming Improves Performance of Global Machine Learning Methods in Omics-Based Personalized Oncology.

Authors:  Victor Tkachev; Maxim Sorokin; Constantin Borisov; Andrew Garazha; Anton Buzdin; Nicolas Borisov
Journal:  Int J Mol Sci       Date:  2020-01-22       Impact factor: 5.923

  5 in total

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