伊朗成年人工心脏瓣膜患者华法林最佳剂量智能预测系统的开发

M. Aghazadeh, A. Orooji, Mehran Kamkar Haghighi
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引用次数: 0

摘要

导读:医学领域的人工智能(AI)研究正在迅速发展。人工智能将改变医疗实践。人工智能在医疗保健和医疗实践的几个领域得到了研究,包括诊断、治疗和护理病人。华法林是最常用的口服抗凝剂之一。在所有抗凝血药物中,华法林一直被列为引起药物不良事件的十大药物之一。由于华法林的治疗范围窄、副作用大,其剂量的确定在临床实践中成为一项具有挑战性的任务。本研究的目的是利用人工神经网络(ANN)确定人工心脏瓣膜患者所需华法林的确切剂量。研究进展:为了获得最佳模型,构建了不同结构的多层感知器人工神经网络。使用的数据集包括2013年下半年转介到德黑兰心脏中心PT诊所的846名患者。最后,研究了华法林剂量神经网络的最佳结构,并将其用于预测系统的开发。本文介绍了人工神经网络在MatLab环境下的实现和系统设计。应用:采用10倍交叉验证程序对人工神经网络的分类性能进行评估,结果表明,最佳模型是隐藏层有7个神经元的网络,平均绝对误差为0.1,干扰率为0.33,回归率为0.87。结论:基于神经网络的系统是伊朗人工心脏瓣膜患者华法林剂量预测的合适工具。然而,没有任何系统可以保证达到100%的准确性,但使用这些方法可以减少医疗错误,从而改善医疗保健和患者安全。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Developing an Intelligent System for Prediction of Optimal Dose of Warfarin in Iranian Adult Patients with Artificial Heart Valve
Introduction: Artificial intelligence (AI) research within medicine is growing rapidly. AI is poised to transform medical practice. AI has been studied in several areas of healthcare and medical practice, including diagnosing, treating and caring of patients. Warfarin is one of the most commonly prescribed oral anticoagulant. Among all anticoagulants, warfarin has long been listed among the top ten drugs causing adverse drug events. Due to narrow therapeutic range and significant side effects, warfarin dosage determination becomes a challenging task in clinical practice. The purpose of this study was to determine exact dose of warfarin needed for patients with artificial heart valve using artificial neural networks (ANN).Development: To achieved the best model, some multi-layer perceptron ANNs were constructed with different structures. The dataset used included 846 patients who had been referred to the PT clinic in Tehran heart center in the second six months of the year 2013. Finally, the best structure of ANN for warfarin dose was investigated and used for prediction system developments. In this paper the implementation of ANNs and proposed system in MatLab environment are described.Application: The effectiveness of ANNs were evaluated in terms of classification performance using 10fold cross-validation procedure and the results showed that the best model is a network that has 7 neurons in its hidden layer with an average absolute error of 0.1, disturbance rate of 0.33 and regression of 0.87. Conclusion: The achieved results reveal that ANN-based system is a suitable tool for warfarin dose prediction in Iranian patients with an artificial heartvalve. However, no system can be guaranteed to achieve 100% accuracy, but using such methods can reduce medical errors and thereby improve health care and patient safety.
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