Adult Congenital Heart Centre, National Centre for Pulmonary Hypertension, Royal Brompton Hospital, Sydney Street, London, UK.
National Heart and Lung Institute, Imperial College School of Medicine, Dovehouse Street, London, UK.
Eur Heart J. 2019 Apr 1;40(13):1069-1077. doi: 10.1093/eurheartj/ehy915.
To assess the utility of machine learning algorithms on estimating prognosis and guiding therapy in a large cohort of patients with adult congenital heart disease (ACHD) or pulmonary hypertension at a single, tertiary centre.
We included 10 019 adult patients (age 36.3 ± 17.3 years) under follow-up at our institution between 2000 and 2018. Clinical and demographic data, ECG parameters, cardiopulmonary exercise testing, and selected laboratory markers where collected and included in deep learning (DL) algorithms. Specific DL-models were built based on raw data to categorize diagnostic group, disease complexity, and New York Heart Association (NYHA) class. In addition, models were developed to estimate need for discussion at multidisciplinary team (MDT) meetings and to gauge prognosis of individual patients. Overall, the DL-algorithms-based on over 44 000 medical records-categorized diagnosis, disease complexity, and NYHA class with an accuracy of 91.1%, 97.0%, and 90.6%, respectively in the test sample. Similarly, patient presentation at MDT-meetings was predicted with a test sample accuracy of 90.2%. During a median follow-up time of 8 years, 785 patients died. The automatically derived disease severity-score derived from clinical information was related to survival on Cox analysis independently of demographic, exercise, laboratory, and ECG parameters.
We present herewith the utility of machine learning algorithms trained on large datasets to estimate prognosis and potentially to guide therapy in ACHD. Due to the largely automated process involved, these DL-algorithms can easily be scaled to multi-institutional datasets to further improve accuracy and ultimately serve as online based decision-making tools.
评估机器学习算法在单中心、大型成人先天性心脏病(ACHD)或肺动脉高压患者队列中估计预后和指导治疗的效用。
我们纳入了 2000 年至 2018 年期间在我们机构接受随访的 10019 名成年患者(年龄 36.3±17.3 岁)。收集了临床和人口统计学数据、心电图参数、心肺运动试验以及选定的实验室标志物,并将其纳入深度学习(DL)算法中。根据原始数据构建了特定的 DL 模型,以对诊断组、疾病复杂性和纽约心脏协会(NYHA)分级进行分类。此外,还开发了模型来估计是否需要在多学科团队(MDT)会议上进行讨论,并评估患者的预后。总体而言,基于超过 44000 份病历的 DL 算法在测试样本中对诊断、疾病复杂性和 NYHA 分级的分类准确率分别为 91.1%、97.0%和 90.6%。同样,MDT 会议上患者的就诊情况在测试样本中的准确率为 90.2%。在中位 8 年的随访期间,785 名患者死亡。Cox 分析显示,从临床信息中自动得出的疾病严重程度评分与生存有关,独立于人口统计学、运动、实验室和心电图参数。
我们在此展示了基于大型数据集训练的机器学习算法在估计 ACHD 患者预后和潜在治疗指导方面的效用。由于涉及的过程大部分是自动化的,这些 DL 算法可以很容易地扩展到多机构数据集,以进一步提高准确性,并最终作为在线决策工具。