Argiento Paola, D'Agostino Anna, Castaldo Rossana, Franzese Monica, Mazzola Matteo, Grünig Ekkehard, Saldamarco Lavinia, Valente Valeria, Schiavo Alessandra, Maffei Erica, Lepre Davide, Cittadini Antonio, Bossone Eduardo, D'Alto Michele, Gargani Luna, Marra Alberto Maria
Department of Cardiology, University "L. Vanvitelli"-Monaldi Hospital, Naples, Italy.
IRCCS SYNLAB SDN S.p.A, Italy.
Comput Struct Biotechnol J. 2024 Nov 22;24:746-753. doi: 10.1016/j.csbj.2024.11.031. eCollection 2024 Dec.
Pulmonary hypertension (PH) is a pathophysiological problem that may involve several clinical symptoms and be linked to various respiratory and cardiovascular illnesses. Its diagnosis is made invasively by Right Cardiac Catheterization (RHC), which is difficult to perform routinely. Aim of the current study was to develop a Machine Learning (ML) algorithm based on the analysis of anamnestic data to predict the presence of an invasively measured PH.
226 patients with clinical indication of RHC for suspected PH were enrolled between October 2017 and October 2020. All patients underwent a protocol of diagnostic techniques for PH according to the recommended guidelines. Machine learning (ML) approaches were considered to develop classifiers aiming to automatically detect patients affected by PH, based on the patient's characteristics, anamnestic data, and non-invasive parameters, transthoracic echocardiography (TTE) results and spirometry outcomes.
Out of 51 variables of patients undergoing RHC collected, 12 resulted significantly different between patients who resulted positive and those who resulted negative at RHC. Among them 8 were selected and utilized to both train and validate an Elastic-Net Regularized Generalized Linear Model, from which a risk score was developed. The AUC of the identification model is of 83 % with an overall accuracy of 74 % [95 % CI (61 %, 84 %)], indicating very good discrimination between patients with and without the pathology.
The PH-targeted ML models could streamline routine screening for PH, facilitating earlier identification and better RHC referrals.
肺动脉高压(PH)是一种病理生理问题,可能涉及多种临床症状,并与各种呼吸和心血管疾病相关。其诊断通过右心导管检查(RHC)进行,这是一种侵入性检查,难以常规开展。本研究的目的是基于对既往数据的分析开发一种机器学习(ML)算法,以预测侵入性测量的PH的存在。
2017年10月至2020年10月期间,纳入了226例因疑似PH而有RHC临床指征的患者。所有患者均按照推荐指南接受了PH诊断技术方案。考虑采用机器学习(ML)方法开发分类器,旨在根据患者特征、既往数据、无创参数、经胸超声心动图(TTE)结果和肺量计检查结果自动检测受PH影响的患者。
在收集的接受RHC的患者的51个变量中,12个在RHC结果为阳性和阴性的患者之间存在显著差异。其中8个被选出来用于训练和验证弹性网正则化广义线性模型,并据此开发了一个风险评分。识别模型的AUC为83%,总体准确率为74%[95%CI(61%,84%)],表明在有和无该疾病的患者之间有很好的区分度。
针对PH的ML模型可以简化PH的常规筛查,有助于更早识别和更好地进行RHC转诊。