Regular surveillance is an indispensable aspect of managing cardiovascular disorders. Patient recruitment for rare or specific diseases is often limited due to their small patient size and episodic observations, whereas prevalent cases accumulate longitudinal data easily due to regular follow-ups. These data, however, are notorious for their irregularity, temporality, sparsity, and absenteeism. In this study, we leveraged self-supervised learning (SSL) and transfer learning to overcome the above-mentioned barriers, transferring patient progress trends in cardiovascular laboratory parameters from prevalent cases to rare or specific cardiovascular events detection. We pretrained a general laboratory progress (GLP) pretrain model using hypertension patients (who were yet to be diabetic), and transferred their laboratory progress trend to assist in detecting target vessel revascularization (TVR) in percutaneous coronary intervention patients. GLP adopted a two-stage training process that utilized interpolated data, enhancing the performance of SSL. After pretraining GLP, we fine-tuned it for TVR prediction. The proposed two-stage training process outperformed SSL. Upon processing by GLP, the classification demonstrated a marked improvement, increasing from 0.63 to 0.90 in averaged accuracy. All metrics were significantly superior (p < 0.01) to the performance of prior GLP processing. The representation displayed distinct separability independent of algorithmic mechanisms, and diverse data distribution trend. Our approach effectively transferred the progression trends of cardiovascular laboratory parameters from prevalent cases to small-numbered cases, thereby demonstrating its efficacy in aiding the risk assessment of cardiovascular events without limiting to episodic observation. The potential for extending this approach to other laboratory tests and diseases is promising.
翻译:经常监测是管理心血管疾病的一个不可或缺的方面。对罕见或特定疾病的患者的聘用往往有限,原因是病人人数少,且有偶发性观察,而常见病例由于定期跟踪,很容易积累纵向数据。然而,这些数据臭名昭著,因为它们的不正常性、时间性、紧张性和缺勤。在本研究中,我们利用自我监督的学习(SSL)和转移学习来克服上述障碍,将心血管实验室参数的患者进展趋势从常见病例转移到罕见或特定心血管事件检测。我们预先用高血压病人(尚未减肥)对实验室一般进展(GLP)前程模型进行了测试,并将实验室进展趋势转移到实验室,以协助检测目标船只的穿透性(TVR),但是,GLP采用两阶段培训过程,在GLP之前将病人的进展趋势转移至TVR事件或特定心血管事件。在GLP进行两阶段培训后,我们为SLSLA预测, 拟议的先期培训过程将SLSL系统风险调整为超越SL。在GLP进行处理时,在GLP进行处理时,将实验室常规观察过程的升级的进度分析结果显示从0.6到整个实验室平均分析过程的准确性分析,从而显示整个实验室的升级为0.0.0.0.0.9的精确度。</s>