可解释性
过度拟合
鉴定(生物学)
肺病
慢性阻塞性肺病
风险评估
疾病
人工智能
计算机科学
重症监护医学
风险分析(工程)
医学
病理
内科学
生物
植物
计算机安全
人工神经网络
作者
Xuehai Wang,Xiangdong Wang,Y.N. Cheng,Chao Luo,Weiyi Xia,Zhengnan Gao,Wenxia Bu,Yichen Jiang,Fei Yue,Weiwei Shi,Juan Tang,Lei Liu,Jinfeng Zhu,Xinyuan Zhao
标识
DOI:10.1016/j.ecoenv.2024.116842
摘要
Numerous studies have highlighted the correlation between metal intake and deteriorated pulmonary function, emphasizing its pivotal role in the progression of Chronic Obstructive Pulmonary Disease (COPD). However, the efficacy of traditional models is often compromised due to overfitting and high bias in datasets with low-level exposure, rendering them ineffective in delineating the contemporary risk trends associated with pulmonary diseases. To address these limitations, we embarked on developing advanced, interpretable models, crucial for elucidating the intricate mechanisms of metal toxicity and enriching the domain knowledge embedded in toxicity models. In this endeavor, we scrutinized extensive, long-term metal exposure datasets from NHANES to explore the interplay between metal and pulmonary functionality. Employing a variety of machine-learning approaches, we opted for the "Mixer of Experts" model for its proficiency in identifying a myriad of toxicological trends and sensitivities. We conceptualized and illustrated the TSAP (Toxicity Score at Population-level), a metal interpretable scoring system offering performance nearly equivalent to the amalgamation of standard interpretable methods addressing the "black box" conundrum. This streamlined, bifurcated procedural analysis proved instrumental in discerning established risk factors, thereby uncovering Tungsten as a novel contributor to COPD risk. SYNOPSIS: TSAP achieved satisfied performance with transparent interpretability, suggesting tungsten intake need further action for COPD prevention.
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