根据遗传和非遗传因素预测土耳其患者华法林剂量的专家系统

Osman Altay, M. Ulaş, M. Ozer, E. Genc
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引用次数: 6

摘要

华法林是一种维生素K拮抗剂,是世界上使用最广泛的口服抗凝血剂之一。影响华法林的遗传因素(CYP2C9、CYP4F2和VKORC1)已在不同的研究中得到证实。除了遗传因素外,年龄、身高、体重和出血状况也有影响。华法林处方用药剂量不当,给患者带来不可挽回的灾难。病人需要服用的华法林的量是由INR机器决定的,这需要花费很多时间。由于使用常规方法估计剂量需要很长时间,因此提出使用数据挖掘算法来预测华法林的剂量。与以往的研究不同,本文采用分类法而非数值预测法计算华法林用量,准确率高于以往的成功准确率。利用本研究中土耳其患者的数据,采用贝叶斯和k -最近邻(KNN)算法对患者华法林药物每日使用所需剂量范围进行分类。本研究采用贝叶斯算法计算结果为%59.01,采用KNN算法计算结果为%50.52。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Expert System to Predict Warfarin Dosage in Turkish Patients Depending on Genetic and Non-Genetic Factors
Warfarin which is a vitamin K antagonist is one of the most widely used oral anticoagulants worldwide. Genetic factors affecting warfarin (CYP2C9, CYP4F2 and VKORC1) have been shown in different studies. Apart from genetic factors, the effects of age, height, weight and bleeding condition also have been proven. The use of prescribed warfarin drug in the wrong doses leads to irreparable disasters for the patients. The amount of warfarin the patients have to take is determined by the INR machine and this takes a lot of time. Since dose estimation takes a long time with conventional methods, use of data mining algorithms has been proposed for prediction of warfarin dose. In this paper, unlike previous studies, it was shown that the amount of warfarin was calculated not by numeric prediction but by classification, and better accuracy rates than previous success accuracy rates were obtained. Using the data obtained from the Turkish patients in the study, the dose range required for daily use of the patient's warfarin drug dose was classified by Bayesian and K-Nearest Neighbor (KNN) algorithms. The result of this study using Bayesian algorithm calculated as %59.01 and using KNN algorithm calculated as %50.52.
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