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首页> 外文期刊>BioMed research international >Prediction of Early Recurrence of Liver Cancer by a Novel Discrete Bayes Decision Rule for Personalized Medicine
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Prediction of Early Recurrence of Liver Cancer by a Novel Discrete Bayes Decision Rule for Personalized Medicine

机译:一种小巧的独立贝叶斯决策规则对肝癌早期复发的预测

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摘要

We discuss a novel diagnostic method for predicting the early recurrence of liver cancer with high accuracy for personalized medicine. The difficulty with cancer treatment is that even if the types of cancer are the same, the cancers vary depending on the patient. Thus, remarkable attention has been paid to personalized medicine. Unfortunately, although the Tokyo Score, the Modified JIS, and the TNM classification have been proposed as liver scoring systems, none of these scoring systems have met the needs of clinical practice. In this paper, we convert continuous and discrete data to categorical data and keep the natively categorical data as is. Then, we propose a discrete Bayes decision rule that can deal with the categorical data. This may lead to its use with various types of laboratory data. Experimental results show that the proposed method produced a sensitivity of 0.86 and a specificity of 0.49 for the test samples. This suggests that our method may be superior to the well-known Tokyo Score, the Modified JIS, and the TNM classification in terms of sensitivity. Additional comparative study shows that if the numbers of test samples in two classes are the same, this method works well in terms of the F1 measure compared to the existing scoring methods.
机译:我们讨论了一种新的诊断方法,用于预测肝癌早期复发,高精度地进行个性化医学。癌症治疗的困难是,即使癌症类型是相同的,癌症也根据患者而变化。因此,对个性化药物进行了显着的关注。不幸的是,尽管东京得分,改进的JIR和TNM分类已经被提出为肝脏评分系统,但这些评分系统都没有满足临床实践的需求。在本文中,我们将连续和离散数据转换为分类数据,并保持本身的分类数据。然后,我们提出了一个可以处理分类数据的离散贝母决策规则。这可能导致其与各种类型的实验室数据一起使用。实验结果表明,该方法产生了0.86的灵敏度,对试验样品的特异性为0.49。这表明我们的方法可能优于众所周知的东京评分,改进的JIS和TNM分类在灵敏度方面。另外的比较研究表明,如果两个类中的测试样本的数量相同,则与现有评分方法相比,该方法在F1测量方面运作良好。

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