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MPHIA个体数据集上的因果结构学习

Causal Structural Learning on MPHIA Individual Dataset

Journal of the American Statistical Association · 2022
被引 2
ABS 4

中文导读

提出一种新的因果结构学习算法,用于从马拉维PHIA调查数据中发现影响HIV 90-90-90目标的关键因素和因果路径,发现年龄、安全套使用、性伴侣数等对HIV认知和治疗有重要影响。

Abstract

The Population-based HIV Impact Assessment (PHIA) is an ongoing project that conducts nationally representative HIV-focused surveys for measuring national and regional progress toward UNAIDS' 90-90-90 targets, the primary strategy to end the HIV epidemic. We believe the PHIA survey offers a unique opportunity to better understand the key factors that drive the HIV epidemics in the most affected countries in sub-Saharan Africa. In this article, we propose a novel causal structural learning algorithm to discover important covariates and potential causal pathways for 90-90-90 targets. Existing constrained-based causal structural learning algorithms are quite aggressive in edge removal. The proposed algorithm preserves more information about important features and potential causal pathways. It is applied to the Malawi PHIA (MPHIA) data set and leads to interesting results. For example, it discovers age and condom usage to be important for female HIV awareness; the number of sexual partners to be important for male HIV awareness; and knowing the travel time to HIV care facilities leads to a higher chance of being treated for both females and males. We further compare and validate the proposed algorithm using BIC and using Monte Carlo simulations, and show that the proposed algorithm achieves improvement in true positive rates in important feature discovery over existing algorithms.

因果推断机器学习HIV流行病学公共卫生