Prevalence of thalassemia in the Vietnamese population and building a clinical decision support system for prenatal screening for thalassemia

IF 1 Q3 MEDICINE, GENERAL & INTERNAL Electronic Journal of General Medicine Pub Date : 2023-07-01 DOI:10.29333/ejgm/13206
Danh Cuong Tran, Anh Linh Dang, Thi Ngoc Lan Hoang, Chi Thanh Nguyen, Thi Minh Phuong Le, Thi Ngoc Mai Dinh, Van Anh Tran, Thi Kim Phuong Doan, Thi Trang Nguyen
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Abstract

The prevalence of thalassemia among the Vietnamese population was studied, and clinical decision support systems (CDSSs) for prenatal screening of thalassemia were created. A cross-sectional study was conducted on pregnant women and their husbands visiting from October 2020 to December 2021. A total of 10,112 medical records of first-time pregnant women and their husbands were collected. CDSS including two different types of systems for prenatal screening for thalassemia (expert system [ES] and four artificial intelligence [AI]-based CDSS) was built. 1,992 cases were used to train and test machine learning (ML) models while 1,555 cases were used for specialized ES evaluation. There were 10 key variables for AI-based CDSS for ML. The four most important features in thalassemia screening were identified. Accuracy of ES and AI-based CDSS was compared. The rate of patients with alpha thalassemia is 10.73% (1,085 patients), the rate of patients with beta-thalassemia is 2.24% (227 patients), and 0.29% (29 patients) of patients carry both alpha-thalassemia and beta-thalassemia gene mutations. ES showed an accuracy of 98.45%. Among AI-based CDSS developed, multilayer perceptron model was the most stable regardless of the training database (accuracy of 98.50% using all features and 97.00% using only the four most important features). AI-based CDSS showed satisfactory results. Further development of such systems is promising with a view to their introduction into clinical practice.
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越南人口中地中海贫血的患病率及建立产前地中海贫血筛查临床决策支持系统
研究了越南人群中地中海贫血的患病率,并创建了用于地中海贫血产前筛查的临床决策支持系统(cdss)。对2020年10月至2021年12月期间来访的孕妇及其丈夫进行了横断面研究。共收集了首次怀孕妇女及其丈夫的10112份医疗记录。构建了包括两种不同类型的地中海贫血产前筛查系统(专家系统[ES]和四个基于人工智能[AI]的CDSS)的CDSS。1992个案例用于训练和测试机器学习(ML)模型,1555个案例用于专门的ES评估。基于人工智能的ML CDSS有10个关键变量。确定了地中海贫血筛查中最重要的四个特征。比较了基于ES和ai的CDSS的准确性。α -地中海贫血患者占10.73%(1085例),β -地中海贫血患者占2.24%(227例),α -地中海贫血和β -地中海贫血基因同时突变的患者占0.29%(29例)。ES的准确率为98.45%。在基于人工智能的CDSS开发中,多层感知器模型是最稳定的,无论训练数据库如何(使用所有特征的准确率为98.50%,仅使用最重要的四个特征的准确率为97.00%)。基于人工智能的CDSS取得了满意的效果。这类系统的进一步发展有望将其引入临床实践。
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来源期刊
Electronic Journal of General Medicine
Electronic Journal of General Medicine MEDICINE, GENERAL & INTERNAL-
CiteScore
3.60
自引率
4.80%
发文量
79
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