Yoon Jinsung, Davtyan Camelia, van der Schaar Mihaela
IEEE J Biomed Health Inform. 2017 Jul;21(4):1133-1145. doi: 10.1109/JBHI.2016.2574857. Epub 2016 Jun 1.
With the advent of electronic health records, more data are continuously collected for individual patients, and more data are available for review from past patients. Despite this, it has not yet been possible to successfully use this data to systematically build clinical decision support systems that can produce personalized clinical recommendations to assist clinicians in providing individualized healthcare. In this paper, we present a novel approach, discovery engine (DE), that discovers which patient characteristics are most relevant for predicting the correct diagnosis and/or recommending the best treatment regimen for each patient. We demonstrate the performance of DE in two clinical settings: diagnosis of breast cancer as well as a personalized recommendation for a specific chemotherapy regimen for breast cancer patients. For each distinct clinical recommendation, different patient features are relevant; DE can discover these different relevant features and use them to recommend personalized clinical decisions. The DE approach achieves a 16.6% improvement over existing state-of-the-art recommendation algorithms regarding kappa coefficients for recommending the personalized chemotherapy regimens. For diagnostic predictions, the DE approach achieves a 2.18% and 4.20% improvement over existing state-of-the-art prediction algorithms regarding prediction error rate and false positive rate, respectively. We also demonstrate that the performance of our approach is robust against missing information and that the relevant features discovered by DE are confirmed by clinical references.
随着电子健康记录的出现,越来越多的数据不断收集到个体患者身上,过去患者的数据也可供查阅。尽管如此,仍无法成功利用这些数据来系统地构建临床决策支持系统,从而生成个性化的临床建议以协助临床医生提供个性化医疗服务。在本文中,我们提出了一种新颖的方法——发现引擎(DE),它能发现哪些患者特征对于预测正确诊断和/或为每位患者推荐最佳治疗方案最为相关。我们在两种临床场景中展示了DE的性能:乳腺癌诊断以及为乳腺癌患者推荐特定化疗方案的个性化推荐。对于每一个不同的临床建议,不同的患者特征是相关的;DE可以发现这些不同的相关特征并利用它们来推荐个性化的临床决策。在推荐个性化化疗方案的kappa系数方面,DE方法比现有的最先进推荐算法提高了16.6%。对于诊断预测,DE方法在预测错误率和误报率方面分别比现有的最先进预测算法提高了2.18%和4.20%。我们还证明了我们的方法在面对缺失信息时性能稳健,并且DE发现的相关特征得到了临床参考文献的证实。