Literature DB >> 33606264

Overcoming Interpretability in Deep Learning Cancer Classification.

Yue Yang Alan Teo1, Artem Danilevsky1, Noam Shomron2.   

Abstract

Since its inception, deep learning has revolutionized the field of machine learning and data-driven science. One such data-driven science to be transformed by deep learning is genomics. In the past decade, numerous genomics studies have adopted deep learning and its applications range from predicting regulatory elements to cancer classification. Despite its dominating efficacy in these applications, deep learning is not without drawbacks. A prominent shortcoming of deep learning is the lack of interpretability. Hence, the main objective of this study is to address this obstacle in the deep learning cancer classification. Here we adopt a feature importance scoring methodology (Gradient-based class activation mapping or Grad-CAM) on a quasi-recurrent neural network model that classify cancer based on FASTA sequencing data. In this study, we managed to formulate a nucleotide-to-genomic-region Grad-CAM scoring methodology, as well as, validate the use this methodology for the chosen model. Consequently, this allows for the utilization of the Grad-CAM scoring methodology for feature importance in deep learning cancer classification. The results from our study identify potential novel candidate genes, genomic elements, and mechanisms for future cancer research.

Entities:  

Keywords:  Cancer classification; Deep learning

Mesh:

Year:  2021        PMID: 33606264     DOI: 10.1007/978-1-0716-1103-6_15

Source DB:  PubMed          Journal:  Methods Mol Biol        ISSN: 1064-3745


  13 in total

1.  Predicting the sequence specificities of DNA- and RNA-binding proteins by deep learning.

Authors:  Babak Alipanahi; Andrew Delong; Matthew T Weirauch; Brendan J Frey
Journal:  Nat Biotechnol       Date:  2015-07-27       Impact factor: 54.908

2.  Direct detection of early-stage cancers using circulating tumor DNA.

Authors:  Jillian Phallen; Mark Sausen; Vilmos Adleff; Alessandro Leal; Carolyn Hruban; James White; Valsamo Anagnostou; Jacob Fiksel; Stephen Cristiano; Eniko Papp; Savannah Speir; Thomas Reinert; Mai-Britt Worm Orntoft; Brian D Woodward; Derek Murphy; Sonya Parpart-Li; David Riley; Monica Nesselbush; Naomi Sengamalay; Andrew Georgiadis; Qing Kay Li; Mogens Rørbæk Madsen; Frank Viborg Mortensen; Joost Huiskens; Cornelis Punt; Nicole van Grieken; Remond Fijneman; Gerrit Meijer; Hatim Husain; Robert B Scharpf; Luis A Diaz; Siân Jones; Sam Angiuoli; Torben Ørntoft; Hans Jørgen Nielsen; Claus Lindbjerg Andersen; Victor E Velculescu
Journal:  Sci Transl Med       Date:  2017-08-16       Impact factor: 17.956

3.  Predicting the impact of non-coding variants on DNA methylation.

Authors:  Haoyang Zeng; David K Gifford
Journal:  Nucleic Acids Res       Date:  2017-06-20       Impact factor: 16.971

4.  Predicting effects of noncoding variants with deep learning-based sequence model.

Authors:  Jian Zhou; Olga G Troyanskaya
Journal:  Nat Methods       Date:  2015-08-24       Impact factor: 28.547

Review 5.  Deep learning: new computational modelling techniques for genomics.

Authors:  Gökcen Eraslan; Žiga Avsec; Julien Gagneur; Fabian J Theis
Journal:  Nat Rev Genet       Date:  2019-07       Impact factor: 53.242

6.  Basset: learning the regulatory code of the accessible genome with deep convolutional neural networks.

Authors:  David R Kelley; Jasper Snoek; John L Rinn
Journal:  Genome Res       Date:  2016-05-03       Impact factor: 9.043

7.  DeepCpG: accurate prediction of single-cell DNA methylation states using deep learning.

Authors:  Christof Angermueller; Heather J Lee; Wolf Reik; Oliver Stegle
Journal:  Genome Biol       Date:  2017-04-11       Impact factor: 13.583

8.  Discovering epistatic feature interactions from neural network models of regulatory DNA sequences.

Authors:  Peyton Greenside; Tyler Shimko; Polly Fordyce; Anshul Kundaje
Journal:  Bioinformatics       Date:  2018-09-01       Impact factor: 6.937

9.  DeFine: deep convolutional neural networks accurately quantify intensities of transcription factor-DNA binding and facilitate evaluation of functional non-coding variants.

Authors:  Meng Wang; Cheng Tai; Weinan E; Liping Wei
Journal:  Nucleic Acids Res       Date:  2018-06-20       Impact factor: 16.971

10.  Sequential regulatory activity prediction across chromosomes with convolutional neural networks.

Authors:  David R Kelley; Yakir A Reshef; Maxwell Bileschi; David Belanger; Cory Y McLean; Jasper Snoek
Journal:  Genome Res       Date:  2018-03-27       Impact factor: 9.043

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  2 in total

1.  Machine Learning-Based Radiomics for Prediction of Epidermal Growth Factor Receptor Mutations in Lung Adenocarcinoma.

Authors:  Jiameng Lu; Xiaoqing Ji; Lixia Wang; Yunxiu Jiang; Xinyi Liu; Zhenshen Ma; Yafei Ning; Jie Dong; Haiying Peng; Fei Sun; Zihan Guo; Yanbo Ji; Jianping Xing; Yue Lu; Degan Lu
Journal:  Dis Markers       Date:  2022-05-07       Impact factor: 3.464

Review 2.  Computational pathology in ovarian cancer.

Authors:  Sandra Orsulic; Joshi John; Ann E Walts; Arkadiusz Gertych
Journal:  Front Oncol       Date:  2022-07-29       Impact factor: 5.738

  2 in total

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