Chami Jason, Nicholson Calum, Baker David, Cordina Rachael, Strange Geoff, Celermajer David S
Sydney Medical School, University of Sydney, Camperdown, NSW 2006, Australia.
Heart Research Institute, 7 Eliza St, Newtown, NSW 2042, Australia.
Int J Cardiol Congenit Heart Dis. 2024 Apr 9;16:100510. doi: 10.1016/j.ijcchd.2024.100510. eCollection 2024 Jun.
In order to manage a class of diseases as broad as congenital heart disease (CHD), multiple "manually generated" classification systems defining CHDs as mild, moderate and severe have been developed and used to good effect. As databases have grown, however, such "manual" complexity scoring has become infeasible. Though past attempts have been made to determine CHD complexity algorithmically using a list of diagnoses alone, missing data and lack of procedural information have been significant limitations.
We built an algorithm that can stratify the complexity of patients with CHD by integrating their diagnoses with a list of their previous procedures. Specific procedures which address a missing diagnosis or imply a certain operative status were used to supplement the diagnosis list. To verify this algorithm, CHD specialists manually checked the classification of 100 children and 100 adults across four hospitals in Australia.
Our algorithm was 99.5% accurate in the manually checked cohort (100% in children and 99% in adults) and was able to automatically classify more than 90% of a cohort of over 24,000 CHD patients, including 92.5% of children (vs 84.4% without procedures, p < 0.0001) and 91.1% of adults (vs 70.4% without procedures; p < 0.0001).
CHD complexity scoring is significantly improved by access to procedural history and can be automatically calculated with high accuracy.
为了管理像先天性心脏病(CHD)这样广泛的一类疾病,已经开发了多种将CHD定义为轻度、中度和重度的“人工生成”分类系统,并取得了良好的效果。然而,随着数据库的不断扩大,这种“人工”复杂性评分变得不可行。尽管过去曾尝试仅使用诊断列表通过算法确定CHD的复杂性,但数据缺失和缺乏手术信息一直是重大限制。
我们构建了一种算法,该算法可以通过将患者的诊断与他们以前的手术列表相结合来对CHD患者的复杂性进行分层。用于解决缺失诊断或暗示某种手术状态的特定手术被用来补充诊断列表。为了验证该算法,CHD专家手动检查了澳大利亚四家医院的100名儿童和100名成人的分类。
在人工检查的队列中,我们的算法准确率为99.5%(儿童为100%,成人为99%),并且能够自动对超过24,000名CHD患者队列中的90%以上进行分类,包括92.5%的儿童(无手术信息时为84.4%,p < 0.0001)和91.1%的成人(无手术信息时为70.4%;p < 0.0001)。
通过获取手术史,CHD复杂性评分得到显著改善,并且可以高精度自动计算。