Deep belief network-based drug identification using near infrared spectroscopy

Near infrared spectroscopy (NIRS) analysis technology, combined with chemometrics, can be effectively used in quick and nondestructive analysis of quality and category. In this paper, an effective drug identification method by using deep belief network (DBN) with dropout mechanism (dropout-DBN) to m...

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Main Authors: Huihua Yang, Baichao Hu, Xipeng Pan, Shengke Yan, Yanchun Feng, Xuebo Zhang, Lihui Yin, Changqin Hu
Format: Article
Language:English
Published: World Scientific Publishing 2017-03-01
Series:Journal of Innovative Optical Health Sciences
Subjects:
Online Access:http://www.worldscientific.com/doi/pdf/10.1142/S1793545816300111
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spelling doaj-b97dd40f74114f97acfc5875884811402020-11-24T22:14:23ZengWorld Scientific PublishingJournal of Innovative Optical Health Sciences1793-54581793-72052017-03-011021630011-11630011-1010.1142/S179354581630011110.1142/S1793545816300111Deep belief network-based drug identification using near infrared spectroscopyHuihua Yang0Baichao Hu1Xipeng Pan2Shengke Yan3Yanchun Feng4Xuebo Zhang5Lihui Yin6Changqin Hu7College of Electronic Engineering and Automation, Guilin University of Electronic Technology, 1 Jinji Road, Guilin 541004, P. R. ChinaCollege of Electronic Engineering and Automation, Guilin University of Electronic Technology, 1 Jinji Road, Guilin 541004, P. R. ChinaAutomation School, Beijing University of Posts & Telecommunications, 10 Xitucheng Road, Beijing 100876, P. R. ChinaCollege of Electronic Engineering and Automation, Guilin University of Electronic Technology, 1 Jinji Road, Guilin 541004, P. R. ChinaNational Institutes for Food and Drug Control, 10 Tiantanxili Road, Beijing 100050, P. R. ChinaNational Institutes for Food and Drug Control, 10 Tiantanxili Road, Beijing 100050, P. R. ChinaNational Institutes for Food and Drug Control, 10 Tiantanxili Road, Beijing 100050, P. R. ChinaNational Institutes for Food and Drug Control, 10 Tiantanxili Road, Beijing 100050, P. R. ChinaNear infrared spectroscopy (NIRS) analysis technology, combined with chemometrics, can be effectively used in quick and nondestructive analysis of quality and category. In this paper, an effective drug identification method by using deep belief network (DBN) with dropout mechanism (dropout-DBN) to model NIRS is introduced, in which dropout is employed to overcome the overfitting problem coming from the small sample. This paper tests proposed method under datasets of different sizes with the example of near infrared diffuse reflectance spectroscopy of erythromycin ethylsuccinate drugs and other drugs, aluminum and nonaluminum packaged. Meanwhile, it gives experiments to compare the proposed method’s performance with back propagation (BP) neural network, support vector machines (SVMs) and sparse denoising auto-encoder (SDAE). The results show that for both binary classification and multi-classification, dropout mechanism can improve the classification accuracy, and dropout-DBN can achieve best classification accuracy in almost all cases. SDAE is similar to dropout-DBN in the aspects of classification accuracy and algorithm stability, which are higher than that of BP neural network and SVM methods. In terms of training time, dropout-DBN model is superior to SDAE model, but inferior to BP neural network and SVM methods. Therefore, dropout-DBN can be used as a modeling tool with effective binary and multi-class classification performance on a spectrum sample set of small size.http://www.worldscientific.com/doi/pdf/10.1142/S1793545816300111Deep belief networksnear infrared spectroscopydrug classificationdropout
collection DOAJ
language English
format Article
sources DOAJ
author Huihua Yang
Baichao Hu
Xipeng Pan
Shengke Yan
Yanchun Feng
Xuebo Zhang
Lihui Yin
Changqin Hu
spellingShingle Huihua Yang
Baichao Hu
Xipeng Pan
Shengke Yan
Yanchun Feng
Xuebo Zhang
Lihui Yin
Changqin Hu
Deep belief network-based drug identification using near infrared spectroscopy
Journal of Innovative Optical Health Sciences
Deep belief networks
near infrared spectroscopy
drug classification
dropout
author_facet Huihua Yang
Baichao Hu
Xipeng Pan
Shengke Yan
Yanchun Feng
Xuebo Zhang
Lihui Yin
Changqin Hu
author_sort Huihua Yang
title Deep belief network-based drug identification using near infrared spectroscopy
title_short Deep belief network-based drug identification using near infrared spectroscopy
title_full Deep belief network-based drug identification using near infrared spectroscopy
title_fullStr Deep belief network-based drug identification using near infrared spectroscopy
title_full_unstemmed Deep belief network-based drug identification using near infrared spectroscopy
title_sort deep belief network-based drug identification using near infrared spectroscopy
publisher World Scientific Publishing
series Journal of Innovative Optical Health Sciences
issn 1793-5458
1793-7205
publishDate 2017-03-01
description Near infrared spectroscopy (NIRS) analysis technology, combined with chemometrics, can be effectively used in quick and nondestructive analysis of quality and category. In this paper, an effective drug identification method by using deep belief network (DBN) with dropout mechanism (dropout-DBN) to model NIRS is introduced, in which dropout is employed to overcome the overfitting problem coming from the small sample. This paper tests proposed method under datasets of different sizes with the example of near infrared diffuse reflectance spectroscopy of erythromycin ethylsuccinate drugs and other drugs, aluminum and nonaluminum packaged. Meanwhile, it gives experiments to compare the proposed method’s performance with back propagation (BP) neural network, support vector machines (SVMs) and sparse denoising auto-encoder (SDAE). The results show that for both binary classification and multi-classification, dropout mechanism can improve the classification accuracy, and dropout-DBN can achieve best classification accuracy in almost all cases. SDAE is similar to dropout-DBN in the aspects of classification accuracy and algorithm stability, which are higher than that of BP neural network and SVM methods. In terms of training time, dropout-DBN model is superior to SDAE model, but inferior to BP neural network and SVM methods. Therefore, dropout-DBN can be used as a modeling tool with effective binary and multi-class classification performance on a spectrum sample set of small size.
topic Deep belief networks
near infrared spectroscopy
drug classification
dropout
url http://www.worldscientific.com/doi/pdf/10.1142/S1793545816300111
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AT shengkeyan deepbeliefnetworkbaseddrugidentificationusingnearinfraredspectroscopy
AT yanchunfeng deepbeliefnetworkbaseddrugidentificationusingnearinfraredspectroscopy
AT xuebozhang deepbeliefnetworkbaseddrugidentificationusingnearinfraredspectroscopy
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