使用机器学习模型预测青紫型和无青紫型先天性心脏病。

Sana Shahid, Haris Khurram, Apiradee Lim, Muhammad Farhan Shabbir, Baki Billah
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引用次数: 0

摘要

背景:先天性心脏病最常见于新生儿,是儿童疾病和儿童发病率和死亡率的主要原因。目的:寻找并建立妊娠期儿童紫绀型和无绀型先天性心脏病的最佳预测模型,并识别其潜在危险因素。方法:数据收集自2017年12月至2019年10月巴基斯坦木尔坦Chaudhry peraiz Elahi心脏病研究所儿科心脏病科。研究人员选取了3900名母亲的样本,这些母亲的孩子被诊断患有紫绀型或无绀型先天性心脏病。采用多变量异常值检测方法识别潜在的异常值。比较不同的机器学习模型,并根据模型的曲线下面积、灵敏度和特异性选择最佳拟合模型。结果:在3900例患者中,约69.5%为紫绀型先天性心脏病,30.5%为紫绀型先天性心脏病。与女性相比,男性有更多的无青紫型(53.6%)和青紫型(54.5%)先天性心脏病病例。母亲在怀孕期间经常吃快餐的孩子患紫绀病的几率要高出1.28倍。选择人工神经网络模型为最佳预测模型,曲线下面积为0.9012,灵敏度为65.76%,特异性为97.23%。结论:家族史阳性的儿童患紫绀型和无绀型先天性心脏病的风险非常高。男性患病的风险更大,他们的母亲在怀孕期间需要更多的照顾、优质的食物和体育锻炼。预测青紫型和无青紫型先天性心脏病最合适的模型是人工神经网络。获得的结果和确定的最佳模型将有助于医生和公共卫生科学家就早期诊断和改善巴基斯坦儿童的健康状况作出知情决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of cyanotic and acyanotic congenital heart disease using machine learning models.

Background: Congenital heart disease is most commonly seen in neonates and it is a major cause of pediatric illness and childhood morbidity and mortality.

Aim: To identify and build the best predictive model for predicting cyanotic and acyanotic congenital heart disease in children during pregnancy and identify their potential risk factors.

Methods: The data were collected from the Pediatric Cardiology Department at Chaudhry Pervaiz Elahi Institute of Cardiology Multan, Pakistan from December 2017 to October 2019. A sample of 3900 mothers whose children were diagnosed with cyanotic or acyanotic congenital heart disease was taken. Multivariate outlier detection methods were used to identify the potential outliers. Different machine learning models were compared, and the best-fitted model was selected using the area under the curve, sensitivity, and specificity of the models.

Results: Out of 3900 patients included, about 69.5% had acyanotic and 30.5% had cyanotic congenital heart disease. Males had more cases of acyanotic (53.6%) and cyanotic (54.5%) congenital heart disease as compared to females. The odds of having cyanotic was 1.28 times higher for children whose mothers used more fast food frequently during pregnancy. The artificial neural network model was selected as the best predictive model with an area under the curve of 0.9012, sensitivity of 65.76%, and specificity of 97.23%.

Conclusion: Children having a positive family history are at very high risk of having cyanotic and acyanotic congenital heart disease. Males are more at risk and their mothers need more care, good food, and physical activity during pregnancy. The best-fitted model for predicting cyanotic and acyanotic congenital heart disease is the artificial neural network. The results obtained and the best model identified will be useful for medical practitioners and public health scientists for an informed decision-making process about the earlier diagnosis and improve the health condition of children in Pakistan.

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