Yüksek İhtisas University, Faculty of Medicine Department of Internal Medicine, Ankara, Turkey.
Ankara Yildirim Beyazit University, Department of Software Engineering, Faculty of Engineering and Natural Sciences, Ankara, Turkey.
Medicine (Baltimore). 2024 Feb 23;103(8):e37258. doi: 10.1097/MD.0000000000037258.
Gallstone disease (GD) is a common gastrointestinal disease. Although traditional diagnostic techniques, such as ultrasonography, CT, and MRI, detect gallstones, they have some limitations, including high cost and potential inaccuracies in certain populations. This study proposes a machine learning-based prediction model for gallstone disease using bioimpedance and laboratory data. A dataset of 319 samples, comprising161 gallstone patients and 158 healthy controls, was curated. The dataset comprised 38 attributes of the participants, including age, weight, height, blood test results, and bioimpedance data, and it contributed to the literature on gallstones as a new dataset. State-of-the-art machine learning techniques were performed on the dataset to detect gallstones. The experimental results showed that vitamin D, C-reactive protein (CRP) level, total body water, and lean mass are crucial features, and the gradient boosting technique achieved the highest accuracy (85.42%) in predicting gallstones. The proposed technique offers a viable alternative to conventional imaging techniques for early prediction of gallstone disease.
胆石病(GD)是一种常见的胃肠道疾病。虽然传统的诊断技术,如超声、CT 和 MRI,可以检测到胆石,但它们存在一些局限性,包括成本高和在某些人群中存在潜在的不准确。本研究提出了一种基于机器学习的胆石病预测模型,该模型使用生物阻抗和实验室数据。整理了一个包含 319 个样本的数据集,其中包括 161 名胆石病患者和 158 名健康对照者。该数据集包含了参与者的 38 个属性,包括年龄、体重、身高、血液测试结果和生物阻抗数据,为胆石病文献提供了一个新的数据集。在数据集上执行了最先进的机器学习技术来检测胆石。实验结果表明,维生素 D、C 反应蛋白(CRP)水平、总体水量和瘦体重是关键特征,梯度提升技术在预测胆石方面达到了最高的准确性(85.42%)。该技术为胆石病的早期预测提供了一种替代传统成像技术的可行方法。