Virtual screening by a new Clustering-based Weighted Similarity Extreme Learning Machine approach.

Machine learning techniques are becoming popular in virtual screening tasks. One of the powerful machine learning algorithms is Extreme Learning Machine (ELM) which has been applied to many applications and has recently been applied to virtual screening. We propose the Weighted Similarity ELM (WS-EL...

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Main Authors: Kitsuchart Pasupa, Wasu Kudisthalert
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2018-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5898726?pdf=render
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spelling doaj-0264d216d3fe43c0ba12f9d6eecfd9862020-11-24T22:11:46ZengPublic Library of Science (PLoS)PLoS ONE1932-62032018-01-01134e019547810.1371/journal.pone.0195478Virtual screening by a new Clustering-based Weighted Similarity Extreme Learning Machine approach.Kitsuchart PasupaWasu KudisthalertMachine learning techniques are becoming popular in virtual screening tasks. One of the powerful machine learning algorithms is Extreme Learning Machine (ELM) which has been applied to many applications and has recently been applied to virtual screening. We propose the Weighted Similarity ELM (WS-ELM) which is based on a single layer feed-forward neural network in a conjunction of 16 different similarity coefficients as activation function in the hidden layer. It is known that the performance of conventional ELM is not robust due to random weight selection in the hidden layer. Thus, we propose a Clustering-based WS-ELM (CWS-ELM) that deterministically assigns weights by utilising clustering algorithms i.e. k-means clustering and support vector clustering. The experiments were conducted on one of the most challenging datasets-Maximum Unbiased Validation Dataset-which contains 17 activity classes carefully selected from PubChem. The proposed algorithms were then compared with other machine learning techniques such as support vector machine, random forest, and similarity searching. The results show that CWS-ELM in conjunction with support vector clustering yields the best performance when utilised together with Sokal/Sneath(1) coefficient. Furthermore, ECFP_6 fingerprint presents the best results in our framework compared to the other types of fingerprints, namely ECFP_4, FCFP_4, and FCFP_6.http://europepmc.org/articles/PMC5898726?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Kitsuchart Pasupa
Wasu Kudisthalert
spellingShingle Kitsuchart Pasupa
Wasu Kudisthalert
Virtual screening by a new Clustering-based Weighted Similarity Extreme Learning Machine approach.
PLoS ONE
author_facet Kitsuchart Pasupa
Wasu Kudisthalert
author_sort Kitsuchart Pasupa
title Virtual screening by a new Clustering-based Weighted Similarity Extreme Learning Machine approach.
title_short Virtual screening by a new Clustering-based Weighted Similarity Extreme Learning Machine approach.
title_full Virtual screening by a new Clustering-based Weighted Similarity Extreme Learning Machine approach.
title_fullStr Virtual screening by a new Clustering-based Weighted Similarity Extreme Learning Machine approach.
title_full_unstemmed Virtual screening by a new Clustering-based Weighted Similarity Extreme Learning Machine approach.
title_sort virtual screening by a new clustering-based weighted similarity extreme learning machine approach.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2018-01-01
description Machine learning techniques are becoming popular in virtual screening tasks. One of the powerful machine learning algorithms is Extreme Learning Machine (ELM) which has been applied to many applications and has recently been applied to virtual screening. We propose the Weighted Similarity ELM (WS-ELM) which is based on a single layer feed-forward neural network in a conjunction of 16 different similarity coefficients as activation function in the hidden layer. It is known that the performance of conventional ELM is not robust due to random weight selection in the hidden layer. Thus, we propose a Clustering-based WS-ELM (CWS-ELM) that deterministically assigns weights by utilising clustering algorithms i.e. k-means clustering and support vector clustering. The experiments were conducted on one of the most challenging datasets-Maximum Unbiased Validation Dataset-which contains 17 activity classes carefully selected from PubChem. The proposed algorithms were then compared with other machine learning techniques such as support vector machine, random forest, and similarity searching. The results show that CWS-ELM in conjunction with support vector clustering yields the best performance when utilised together with Sokal/Sneath(1) coefficient. Furthermore, ECFP_6 fingerprint presents the best results in our framework compared to the other types of fingerprints, namely ECFP_4, FCFP_4, and FCFP_6.
url http://europepmc.org/articles/PMC5898726?pdf=render
work_keys_str_mv AT kitsuchartpasupa virtualscreeningbyanewclusteringbasedweightedsimilarityextremelearningmachineapproach
AT wasukudisthalert virtualscreeningbyanewclusteringbasedweightedsimilarityextremelearningmachineapproach
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