Prediction of Human β-secretase 1 (BACE-1) Inhibitors for Alzheimer Therapeutic Agent by Using Fingerprint-based Neural Network Optimized by Bat Algorithm

Aldiyan Farhan Nugroho, Reza Rendian Septiawan, I. Kurniawan
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Abstract

Dementia is a fast-growing public health problem, with an estimated 47 million people currently living with the condition. By 2030, this total is predicted to reach 75 million. By 2050, it will have tripled were, given the urgent need to address this problem. Alzheimer's disease is characterized by a steady decline in cognitive capacities beginning with a decrease in the brain's capacity to form new memories. Significant attention has been focused on developing therapeutic strategies and drugs to treat Alzheimer's disease, which is the most common form of dementia. In this study, the feature used is the PubChem Fingerprint representing the molecule's structure with a total of 822 data for class 0 and 691 data for class 1. We developed a fingerprint-based artificial neural network (ANN) model to predict Beta-secretase 1 (BACE-1) inhibitors as therapeutic agents for Alzheimer's disease. Three optimization strategies, namely the Bat Algorithm, the Hybrid Bat Algorithm, and the Adaptive Bat Algorithm, were used to optimize the architecture of the ANN. This nature-inspired optimization technique mimics the echolocation behavior of bats. The best model was obtained from ANN optimized using Hybrid Bat Algorithm with the value of accuracy and F1-score are 0.81 and 0.78, respectively.
基于Bat算法优化的指纹神经网络预测人β-分泌酶1 (BACE-1)抑制剂用于阿尔茨海默病治疗剂
痴呆症是一个快速增长的公共卫生问题,目前估计有4700万人患有痴呆症。到2030年,这一数字预计将达到7500万。鉴于迫切需要解决这一问题,到2050年,这一数字将增加两倍。阿尔茨海默病的特点是认知能力的持续下降,开始于大脑形成新记忆的能力下降。阿尔茨海默病是一种最常见的痴呆症,人们一直把注意力集中在开发治疗策略和药物上。在本研究中,使用的特征是代表分子结构的PubChem Fingerprint,总共有822个数据用于0类,691个数据用于1类。我们开发了一个基于指纹的人工神经网络(ANN)模型来预测β -分泌酶1 (BACE-1)抑制剂作为阿尔茨海默病的治疗药物。采用蝙蝠算法、混合蝙蝠算法和自适应蝙蝠算法三种优化策略对人工神经网络的结构进行优化。这种受自然启发的优化技术模仿了蝙蝠的回声定位行为。采用混合蝙蝠算法优化的人工神经网络得到最佳模型,准确率为0.81,F1-score为0.78。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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