Litcius/Paper detail

Active disease-related compound identification based on capsule network

Bin Yang, Wenzheng Bao, Jinglong Wang

2021Briefings in Bioinformatics50 citationsDOIOpen Access PDF

Abstract

Pneumonia, especially corona virus disease 2019 (COVID-19), can lead to serious acute lung injury, acute respiratory distress syndrome, multiple organ failure and even death. Thus it is an urgent task for developing high-efficiency, low-toxicity and targeted drugs according to pathogenesis of coronavirus. In this paper, a novel disease-related compound identification model-based capsule network (CapsNet) is proposed. According to pneumonia-related keywords, the prescriptions and active components related to the pharmacological mechanism of disease are collected and extracted in order to construct training set. The features of each component are extracted as the input layer of capsule network. CapsNet is trained and utilized to identify the pneumonia-related compounds in Qingre Jiedu injection. The experiment results show that CapsNet can identify disease-related compounds more accurately than SVM, RF, gcForest and forgeNet.

Topics & Concepts

PneumoniaDiseaseCapsuleAcute respiratory distressIdentification (biology)MedicineComputer scienceArtificial intelligenceLungPathologyBiologyInternal medicineBotanyComputational Drug Discovery MethodsPlant-based Medicinal ResearchMachine Learning in Bioinformatics