Gachon Institute of Pharmaceutical Science, Department of Pharmacy, College of Pharmacy, Gachon University, 191 Hambakmoeiro, Yeonsu-gu, Incheon, Republic of Korea.
Department of Financial Engineering, College of Business, Ajou University, Suwon, 16499, Republic of Korea.
Sci Rep. 2024 Nov 16;14(1):28338. doi: 10.1038/s41598-024-78823-3.
CNS Drug discovery has been challenging due to the lack of clarity on CNS diseases' basic biological and pathological mechanisms. Despite the difficulty, some CNS drugs have been developed based on phenotypic effects. Herein, we propose a phenotype-structure relationship model, which predicts an anti-neuroinflammatory potency based on 3D molecular structures of the phenotype-active or inactive compounds without specifying targets. For this chemo-centric study, a predictive model of the nitric oxide (NO) inhibitory potency in hyper-activated microglia is built from the 548 agents, which were collected from 95 research articles (28 substructures consisting of natural products and synthetic scaffolds) and doubly externally validated by the agents of 9 research articles as third set. 3D Structures (multi-conformer ensemble) of every agent were encoded into the E3FP molecular fingerprint of the Keiser group as a 3D molecular representation. The location information of the molecular fingerprints could be learned and validated to classify the inhibitory potency of compounds (IC cut-off between the active and inactive: 37.1 µM): (1) multi-layer perceptron (MLP) (AUC-: 0.997, AUC-: 0.992), (2) recurrent neural network (RNN) (AUC-: 0.999, AUC-: 0.995), and (3) convolutional neural network (CNN) (AUC-: 0.998, AUC-: 0.994). The high performance of these models was compared with that of four classical machine classification models (Logistic, Ridge, Lasso, and Naïve Bayes). We named the binary classification models NO-Classifier. Independent test set validation and decision region analysis of the independent test set doubly demonstrated NO-Classifier effectively discerned the anti-inflammatory potency of testing compounds in inflammatory cell phenotype with the webserver in https://no-classifier.onrender.com.
中枢神经系统药物发现具有挑战性,因为中枢神经系统疾病的基本生物学和病理学机制尚不清楚。尽管存在困难,但已经基于表型效应开发了一些中枢神经系统药物。在此,我们提出了一种表型-结构关系模型,该模型可以根据表型活性或非活性化合物的 3D 分子结构预测其抗神经炎症效力,而无需指定靶标。在这项以化学为中心的研究中,从 95 篇研究文章(由天然产物和合成支架组成的 28 个子结构)中收集的 548 种药物构建了一种针对过度激活的小胶质细胞中一氧化氮(NO)抑制效力的预测模型,并用 9 篇研究文章中的药物作为第三组进行了双重外部验证。每个药物的 3D 结构(多构象集合)都被编码为 Keiser 小组的 E3FP 分子指纹,作为 3D 分子表示。分子指纹的位置信息可以被学习和验证,以对化合物的抑制效力进行分类(活性和非活性化合物的 IC 截止值:37.1 µM):(1)多层感知机(MLP)(AUC-:0.997,AUC-:0.992),(2)递归神经网络(RNN)(AUC-:0.999,AUC-:0.995),和(3)卷积神经网络(CNN)(AUC-:0.998,AUC-:0.994)。与四个经典机器分类模型(Logistic、Ridge、Lasso 和 Naive Bayes)相比,这些模型的高性能。我们将二元分类模型命名为 NO-Classifier。通过对独立测试集的独立测试集验证和决策区域分析,双重证明了 NO-Classifier 能够有效地识别炎症细胞表型中测试化合物的抗炎效力,网址为 https://no-classifier.onrender.com。