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Transfer learning with convolutional neural networks for cancer survival prediction using gene-expression data
by
Franco, Leonardo
, López-García, Guillermo
, Veredas, Francisco J.
, Jerez, José M.
in
Analysis
/ Artificial neural networks
/ Biology and Life Sciences
/ Cable television broadcasting industry
/ Cancer
/ Cancer genetics
/ Classification
/ Clinical decision making
/ Clinical outcomes
/ Computer and Information Sciences
/ Computer applications
/ Data analysis
/ Data mining
/ Data processing
/ Datasets
/ Decision analysis
/ Decision making
/ Deoxyribonucleic acid
/ Development and progression
/ DNA
/ DNA methylation
/ Feature extraction
/ Gene expression
/ Genes
/ Genomics
/ Information management
/ Learning algorithms
/ Lung cancer
/ Lung diseases
/ Machine learning
/ Mathematical models
/ Medical diagnosis
/ Medical prognosis
/ Medicine
/ Medicine and Health Sciences
/ Methods
/ Natural language processing
/ Nature
/ Network architectures
/ Neural networks
/ Next-generation sequencing
/ Oncology
/ Physicians
/ Precision medicine
/ Predictions
/ Prognosis
/ Proteomics
/ Research and Analysis Methods
/ Ribonucleic acid
/ RNA
/ Survival
/ Survival analysis
/ Transfer learning
/ Tumors
/ Unstructured data
2020
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Transfer learning with convolutional neural networks for cancer survival prediction using gene-expression data
by
Franco, Leonardo
, López-García, Guillermo
, Veredas, Francisco J.
, Jerez, José M.
in
Analysis
/ Artificial neural networks
/ Biology and Life Sciences
/ Cable television broadcasting industry
/ Cancer
/ Cancer genetics
/ Classification
/ Clinical decision making
/ Clinical outcomes
/ Computer and Information Sciences
/ Computer applications
/ Data analysis
/ Data mining
/ Data processing
/ Datasets
/ Decision analysis
/ Decision making
/ Deoxyribonucleic acid
/ Development and progression
/ DNA
/ DNA methylation
/ Feature extraction
/ Gene expression
/ Genes
/ Genomics
/ Information management
/ Learning algorithms
/ Lung cancer
/ Lung diseases
/ Machine learning
/ Mathematical models
/ Medical diagnosis
/ Medical prognosis
/ Medicine
/ Medicine and Health Sciences
/ Methods
/ Natural language processing
/ Nature
/ Network architectures
/ Neural networks
/ Next-generation sequencing
/ Oncology
/ Physicians
/ Precision medicine
/ Predictions
/ Prognosis
/ Proteomics
/ Research and Analysis Methods
/ Ribonucleic acid
/ RNA
/ Survival
/ Survival analysis
/ Transfer learning
/ Tumors
/ Unstructured data
2020
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Do you wish to request the book?
Transfer learning with convolutional neural networks for cancer survival prediction using gene-expression data
by
Franco, Leonardo
, López-García, Guillermo
, Veredas, Francisco J.
, Jerez, José M.
in
Analysis
/ Artificial neural networks
/ Biology and Life Sciences
/ Cable television broadcasting industry
/ Cancer
/ Cancer genetics
/ Classification
/ Clinical decision making
/ Clinical outcomes
/ Computer and Information Sciences
/ Computer applications
/ Data analysis
/ Data mining
/ Data processing
/ Datasets
/ Decision analysis
/ Decision making
/ Deoxyribonucleic acid
/ Development and progression
/ DNA
/ DNA methylation
/ Feature extraction
/ Gene expression
/ Genes
/ Genomics
/ Information management
/ Learning algorithms
/ Lung cancer
/ Lung diseases
/ Machine learning
/ Mathematical models
/ Medical diagnosis
/ Medical prognosis
/ Medicine
/ Medicine and Health Sciences
/ Methods
/ Natural language processing
/ Nature
/ Network architectures
/ Neural networks
/ Next-generation sequencing
/ Oncology
/ Physicians
/ Precision medicine
/ Predictions
/ Prognosis
/ Proteomics
/ Research and Analysis Methods
/ Ribonucleic acid
/ RNA
/ Survival
/ Survival analysis
/ Transfer learning
/ Tumors
/ Unstructured data
2020
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Transfer learning with convolutional neural networks for cancer survival prediction using gene-expression data
Journal Article
Transfer learning with convolutional neural networks for cancer survival prediction using gene-expression data
2020
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Overview
Precision medicine in oncology aims at obtaining data from heterogeneous sources to have a precise estimation of a given patient's state and prognosis. With the purpose of advancing to personalized medicine framework, accurate diagnoses allow prescription of more effective treatments adapted to the specificities of each individual case. In the last years, next-generation sequencing has impelled cancer research by providing physicians with an overwhelming amount of gene-expression data from RNA-seq high-throughput platforms. In this scenario, data mining and machine learning techniques have widely contribute to gene-expression data analysis by supplying computational models to supporting decision-making on real-world data. Nevertheless, existing public gene-expression databases are characterized by the unfavorable imbalance between the huge number of genes (in the order of tenths of thousands) and the small number of samples (in the order of a few hundreds) available. Despite diverse feature selection and extraction strategies have been traditionally applied to surpass derived over-fitting issues, the efficacy of standard machine learning pipelines is far from being satisfactory for the prediction of relevant clinical outcomes like follow-up end-points or patient's survival. Using the public Pan-Cancer dataset, in this study we pre-train convolutional neural network architectures for survival prediction on a subset composed of thousands of gene-expression samples from thirty-one tumor types. The resulting architectures are subsequently fine-tuned to predict lung cancer progression-free interval. The application of convolutional networks to gene-expression data has many limitations, derived from the unstructured nature of these data. In this work we propose a methodology to rearrange RNA-seq data by transforming RNA-seq samples into gene-expression images, from which convolutional networks can extract high-level features. As an additional objective, we investigate whether leveraging the information extracted from other tumor-type samples contributes to the extraction of high-level features that improve lung cancer progression prediction, compared to other machine learning approaches.
Publisher
Public Library of Science,Public Library of Science (PLoS)
Subject
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