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使用电子健康记录诊断代码预测住院心脏骤停死亡率的可解释深度学习模型的临床验证

Clinical Validation of Explainable Deep Learning Model for Predicting the Mortality of In-Hospital Cardiac Arrest Using Diagnosis Codes of Electronic Health Records.

作者信息

Chi Chien-Yu, Moghadas-Dastjerdi Hadi, Winkler Adrian, Ao Shuang, Chen Yen-Pin, Wang Liang-Wei, Su Pei-I, Lin Wei-Shu, Tsai Min-Shan, Huang Chien-Hua

机构信息

Department of Emergency Medicine, National Taiwan University Hospital Yunlin Branch, 640 Yunlin, Taiwan.

Knowtions Research Inc., Toronto, Ontario M5J 2S1, Canada.

出版信息

Rev Cardiovasc Med. 2023 Sep 21;24(9):265. doi: 10.31083/j.rcm2409265. eCollection 2023 Sep.

Abstract

BACKGROUND

Using deep learning for disease outcome prediction is an approach that has made large advances in recent years. Notwithstanding its excellent performance, clinicians are also interested in learning how input affects prediction. Clinical validation of explainable deep learning models is also as yet unexplored. This study aims to evaluate the performance of Deep SHapley Additive exPlanations (D-SHAP) model in accurately identifying the diagnosis code associated with the highest mortality risk.

METHODS

Incidences of at least one in-hospital cardiac arrest (IHCA) for 168,693 patients as well as 1,569,478 clinical records were extracted from Taiwan's National Health Insurance Research Database. We propose a D-SHAP model to provide insights into deep learning model predictions. We trained a deep learning model to predict the 30-day mortality likelihoods of IHCA patients and used D-SHAP to see how the diagnosis codes affected the model's predictions. Physicians were asked to annotate a cardiac arrest dataset and provide expert opinions, which we used to validate our proposed method. A 1-to-4-point annotation of each record (current decision) along with four previous records (historical decision) was used to validate the current and historical D-SHAP values.

RESULTS

A subset consisting of 402 patients with at least one cardiac arrest record was randomly selected from the IHCA cohort. The median age was 72 years, with mean and standard deviation of 69 17 years. Results indicated that D-SHAP can identify the cause of mortality based on the diagnosis codes. The top five most important diagnosis codes, namely respiratory failure, sepsis, pneumonia, shock, and acute kidney injury were consistent with the physician's opinion. Some diagnoses, such as urinary tract infection, showed a discrepancy between D-SHAP and clinical judgment due to the lower frequency of the disease and its occurrence in combination with other comorbidities.

CONCLUSIONS

The D-SHAP framework was found to be an effective tool to explain deep neural networks and identify most of the important diagnoses for predicting patients' 30-day mortality. However, physicians should always carefully consider the structure of the original database and underlying pathophysiology.

摘要

背景

使用深度学习进行疾病预后预测是近年来取得重大进展的一种方法。尽管其性能出色,但临床医生也有兴趣了解输入如何影响预测。可解释深度学习模型的临床验证目前也尚未得到探索。本研究旨在评估深度夏普利加法解释(D-SHAP)模型在准确识别与最高死亡风险相关的诊断代码方面的性能。

方法

从台湾国民健康保险研究数据库中提取了168,693名患者至少一次院内心脏骤停(IHCA)的发生率以及1,569,478条临床记录。我们提出了一个D-SHAP模型,以深入了解深度学习模型的预测。我们训练了一个深度学习模型来预测IHCA患者的30天死亡可能性,并使用D-SHAP来观察诊断代码如何影响模型的预测。要求医生对心脏骤停数据集进行标注并提供专家意见,我们用这些来验证我们提出的方法。对每条记录(当前决策)以及之前的四条记录(历史决策)进行1至4分的标注,以验证当前和历史的D-SHAP值。

结果

从IHCA队列中随机选择了一个由402名至少有一次心脏骤停记录的患者组成的子集。中位年龄为72岁,平均年龄为69岁,标准差为17岁。结果表明,D-SHAP可以根据诊断代码识别死亡原因。最重要的前五个诊断代码,即呼吸衰竭、败血症、肺炎、休克和急性肾损伤,与医生的意见一致。一些诊断,如尿路感染,由于该疾病的发生率较低以及其与其他合并症的联合发生,在D-SHAP和临床判断之间存在差异。

结论

发现D-SHAP框架是解释深度神经网络并识别预测患者30天死亡率的大多数重要诊断的有效工具。然而,医生应始终仔细考虑原始数据库的结构和潜在的病理生理学。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/37d4/11270098/2a93004361ac/2153-8174-24-9-265-g1.jpg

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