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Artificial intelligence predicts the progression of diabetic kidney disease using big data machine learning

机译:人工智能使用大数据机器学习预测糖尿病肾病的进展

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摘要

Artificial intelligence (AI) is expected to support clinical judgement in medicine. We constructed a new predictive model for diabetic kidney diseases (DKD) using AI, processing natural language and longitudinal data with big data machine learning, based on the electronic medical records (EMR) of 64,059 diabetes patients. AI extracted raw features from the previous 6 months as the reference period and selected 24 factors to find time series patterns relating to 6-month DKD aggravation, using a convolutional autoencoder. AI constructed the predictive model with 3,073 features, including time series data using logistic regression analysis. AI could predict DKD aggravation with 71% accuracy. Furthermore, the group with DKD aggravation had a significantly higher incidence of hemodialysis than the non-aggravation group, over 10 years (N = 2,900). The new predictive model by AI could detect progression of DKD and may contribute to more effective and accurate intervention to reduce hemodialysis.
机译:人工智能(AI)有望支持医学领域的临床判断。我们基于64,059名糖尿病患者的电子病历(EMR),使用AI构建了一种新的糖尿病肾脏疾病(DKD)预测模型,并通过大数据机器学习处理自然语言和纵向数据。 AI使用卷积自动编码器从前6个月中提取了原始特征作为参考期,并选择了24个因子来查找与6个月DKD恶化有关的时间序列模式。 AI使用logistic回归分析构建了具有3,073个特征的预测模型,包括时间序列数据。 AI可以预测71%的DKD恶化。此外,在10年中,DKD加重组的血液透析发生率显着高于非加重组(N = 2,900)。 AI的新预测模型可以检测DKD的进展,并可能有助于更有效和准确的干预措施以减少血液透析。

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