2020
DOI: 10.1093/bioinformatics/btaa150
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Supervised learning is an accurate method for network-based gene classification

Abstract: Background Assigning every human gene to specific functions, diseases and traits is a grand challenge in modern genetics. Key to addressing this challenge are computational methods, such as supervised learning and label propagation, that can leverage molecular interaction networks to predict gene attributes. In spite of being a popular machine-learning technique across fields, supervised learning has been applied only in a few network-based studies for predicting pathway-, phenotype- or disea… Show more

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Cited by 32 publications
(55 citation statements)
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“…Murali et al's method and our method can be classified into two different types of network-based gene classification. As reported by Liu et al (25), Murali et al's method belongs to a class of methods referred to as "label propagation," while our RF-based method belongs to another class of methods called "supervised learning." Although "supervised learning" is applied far less frequently than "label propagation" for network-based gene discovery (25), we have clearly demonstrated the promising performance of the proposed RF model in predicting HDFs.…”
Section: Prediction Of Hiv-1 Host Dependency Factorsmentioning
confidence: 90%
See 2 more Smart Citations
“…Murali et al's method and our method can be classified into two different types of network-based gene classification. As reported by Liu et al (25), Murali et al's method belongs to a class of methods referred to as "label propagation," while our RF-based method belongs to another class of methods called "supervised learning." Although "supervised learning" is applied far less frequently than "label propagation" for network-based gene discovery (25), we have clearly demonstrated the promising performance of the proposed RF model in predicting HDFs.…”
Section: Prediction Of Hiv-1 Host Dependency Factorsmentioning
confidence: 90%
“…As reported by Liu et al (25), Murali et al's method belongs to a class of methods referred to as "label propagation," while our RF-based method belongs to another class of methods called "supervised learning." Although "supervised learning" is applied far less frequently than "label propagation" for network-based gene discovery (25), we have clearly demonstrated the promising performance of the proposed RF model in predicting HDFs. Apart from the methodological difference, it is also worth mentioning the different choices of negative samples in these two methods.…”
Section: Prediction Of Hiv-1 Host Dependency Factorsmentioning
confidence: 90%
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“…The recall phase involves determining the output value induced by the network to test whether the output is close to the target output value. The artificial neural network adopted by this study is the back-propagation network [13] in a supervised learning network [14], which is applicable to classification, forecasting, system control, noise filtering, sample identification, and data compression. The input layer units are different in each step.…”
Section: Artificial Neural Networkmentioning
confidence: 99%
“…Such frameworks aim to capture the network connectivity patterns that characterize a set of gold standard (or marker) genes. Network-based machine learning has been used to make reliable predictions on disease-gene associations in humans ( Guan et al, 2010 , 2012 ; Krishnan et al, 2016 ; Liu et al, 2019 ). Such predictive systems have immense potential in the development of decision systems in clinical diagnostics.…”
Section: Introductionmentioning
confidence: 99%