利用计算机断层扫描和电子病历预测 II 型糖尿病发病。

Yucheng Tang, Riqiang Gao, Ho Hin Lee, Quinn Stanton Wells, Ashley Spann, James G Terry, John J Carr, Yuankai Huo, Shunxing Bao, Bennett A Landman
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引用次数: 0

摘要

II 型糖尿病(T2DM)是一个重大的公共卫生问题,有多种已知的风险因素(如体重指数(BMI)、体脂分布、血糖水平)。如果能改善预测或预后,就能在可能发生不可逆转的损害之前尽早进行干预。同时,腹部计算机断层扫描(CT)是一种相对常见的成像技术。在此,我们将探讨如何二次利用 CT 成像数据来完善 T2DM 未来诊断的风险概况。在这项工作中,我们对患者病史的定量信息和成像切片进行了划分,以预测从 ICD-9 编码中检索到的至少一年后发病的 T2DM。此外,我们还研究了五种不同类型的电子病历(EMR)在预测中的作用,具体包括:1)人口统计学;2)胰腺体积;3)L2 感兴趣区域的内脏/皮下脂肪体积;4)腹部体脂分布;5)葡萄糖实验室测试。接下来,我们建立了一个深度神经网络,利用胰腺成像切片预测 T2DM 的发病情况。最后,在多模态机器学习的激励下,我们构建了一个合并框架,将 CT 成像切片与 EMR 信息相结合,以完善预测。经验表明,与仅使用图像或 EMR 相比,我们提出的图像和 EMR 联合分析方法在预测 T2DM 方面分别提高了 4.25% 和 6.93% 的 AUC。在这项研究中,我们使用了由 997 名受试者组成的病例对照数据集,其中包括 CT 扫描和上下文 EMR 评分。据我们所知,这是第一项利用患者的背景和影像病史来预测 T2DM 的研究。我们相信,这项研究在异构数据分析和多模态医疗应用方面具有广阔的前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Type II Diabetes Onset with Computed Tomography and Electronic Medical Records.

Type II diabetes mellitus (T2DM) is a significant public health concern with multiple known risk factors (e.g., body mass index (BMI), body fat distribution, glucose levels). Improved prediction or prognosis would enable earlier intervention before possibly irreversible damage has occurred. Meanwhile, abdominal computed tomography (CT) is a relatively common imaging technique. Herein, we explore secondary use of the CT imaging data to refine the risk profile of future diagnosis of T2DM. In this work, we delineate quantitative information and imaging slices of patient history to predict onset T2DM retrieved from ICD-9 codes at least one year in the future. Furthermore, we investigate the role of five different types of electronic medical records (EMR), specifically 1) demographics; 2) pancreas volume; 3) visceral/subcutaneous fat volumes in L2 region of interest; 4) abdominal body fat distribution and 5) glucose lab tests in prediction. Next, we build a deep neural network to predict onset T2DM with pancreas imaging slices. Finally, motivated by multi-modal machine learning, we construct a merged framework to combine CT imaging slices with EMR information to refine the prediction. We empirically demonstrate our proposed joint analysis involving images and EMR leads to 4.25% and 6.93% AUC increase in predicting T2DM compared with only using images or EMR. In this study, we used case-control dataset of 997 subjects with CT scans and contextual EMR scores. To the best of our knowledge, this is the first work to show the ability to prognose T2DM using the patients' contextual and imaging history. We believe this study has promising potential for heterogeneous data analysis and multi-modal medical applications.

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