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Network analytics and machine learning for predictive risk modelling of cardiovascular disease in patients with type 2 diabetes

机译:2型糖尿病患者心血管疾病预测风险建模的网络分析与机器学习

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A high proportion of older adults with type 2 diabetes (T2D) often develop cardiovascular diseases (CVD). Diagnosis and regular monitoring of their multimorbidity is clinically and economically resource intensive. The interconnectedness of their health data and disease progression pathways can potentially reveal the multi-morbidity risk if carefully analysed by data mining and network analysis techniques. This study proposed a risk prediction model utilising administrative data that uses network-based features and machine learning techniques to assess the risk of CVD in T2D patients. For this, two cohorts (i.e., patients with both T2D and CVD and patients with only T2D) were identified from an administrative dataset collected from the private healthcare funds based in Australia. Two baseline disease networks were generated from two study cohorts. A final disease network was then generated from two baseline disease networks through normalisation. This study extracted some social network-based features (i.e., the prevalence of comorbidities, transition patterns and clustering membership) from the final disease network and some demographic characteristics directly from the dataset. These risk factors were then used to develop six machine learning prediction models to assess the risk of CVD in patients with T2D. The classifiers accuracy ranged from 79% to 88% shows the potential of the network- and machine learning-based risk prediction model utilising administrative data. The proposed risk prediction model could be useful for medical practice as well as stakeholders to develop health management programs for patients at a high risk of developing chronic diseases.
机译:具有2型糖尿病(T2D)的高比例成年人通常会发育心血管疾病(CVD)。诊断和定期监测其多重无水性是临床和经济的资源密集型。如果通过数据挖掘和网络分析技术仔细分析,他们的健康数据和疾病进展途径的相互连接可能会揭示多发病率风险。本研究提出了一种风险预测模型,利用使用基于网络的特征和机器学习技术的管理数据来评估T2D患者中CVD的风险。为此,从澳大利亚的私人医疗保健基金收集的行政数据集中识别了两种群组(即,T2D和T2D和CVD和CVD患者)。两项研究队列产生了两种基线疾病网络。然后通过标准化从两个基线疾病网络中产生最终疾病网络。本研究从最终疾病网络和直接从数据集中提取了一些基于社交网络的特征(即,普遍存在的普遍存在的分子,过渡模式和聚类成员资格)。然后使用这些风险因素来开发六种机器学习预测模型,以评估T2D患者CVD的风险。分类器的准确性范围为79%至88%,显示了利用管理数据的基于网络和机器学习的风险预测模型的潜力。拟议的风险预测模型可用于医疗实践以及利益相关者,为高危患者开发患者的健康管理计划。

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