Bar-Ilan University, Israel.
Ono Academic College, Israel.
J Biomed Inform. 2022 Jan;125:103949. doi: 10.1016/j.jbi.2021.103949. Epub 2021 Dec 5.
Congestive Heart Failure (CHF) is among the most prevalent chronic diseases worldwide, and is commonly associated with comorbidities and complex health conditions. Consequently, CHF patients are typically hospitalized frequently, and are at a high risk of premature death. Early detection of an envisaged patient disease trajectory is crucial for precision medicine. However, despite the abundance of patient-level data, cardiologists currently struggle to identify disease trajectories and track the evolution patterns of the disease over time, especially in small groups of patients with specific disease subtypes. The present study proposed a five-step method that allows clustering CHF patients, detecting cluster similarity, and identifying disease trajectories, and promises to overcome the existing difficulties. This work is based on a rich dataset of patients' records spanning ten years of hospital visits. The dataset contains all the health information documented in the hospital during each visit, including diagnoses, lab results, clinical data, and demographics. It utilizes an innovative Cluster Evolution Analysis (CEA) method to analyze the complex CHF population where each subject is potentially associated with numerous variables. We have defined sub-groups for mortality risk levels, which we used to characterize patients' disease evolution by refined data clustering in three points in time over ten years, and generating patients' migration patterns across periods. The results elicited 18, 23, and 25 clusters respective to the first, second, and third visits, uncovering clinically interesting small sub-groups of patients. In the following post-processing stage, we identified meaningful patterns. The analysis yielded fine-grained patient clusters divided into several finite risk levels, including several small-sized groups of high-risk patients. Significantly, the analysis also yielded longitudinal patterns where patients' risk levels changed over time. Four types of disease trajectories were identified: decline, preserved state, improvement, and mixed-progress. This stage is a unique contribution of the work. The resulting fine partitioning and longitudinal insights promise to significantly assist cardiologists in tailoring personalized interventions to improve care quality. Cardiologists could utilize these results to glean previously undetected relationships between symptoms and disease evolution that would allow a more informed clinical decision-making and effective interventions.
充血性心力衰竭 (CHF) 是全球最常见的慢性疾病之一,通常与合并症和复杂的健康状况相关。因此,CHF 患者通常经常住院,并且过早死亡的风险很高。早期发现预期患者的疾病轨迹对于精准医疗至关重要。然而,尽管有大量的患者水平数据,但心脏病专家目前仍难以识别疾病轨迹并跟踪疾病随时间的演变模式,特别是在特定疾病亚型的小患者群体中。本研究提出了一种五步方法,可以对 CHF 患者进行聚类,检测聚类相似性,并识别疾病轨迹,有望克服现有困难。这项工作基于一个包含十年医院就诊记录的丰富患者数据集。该数据集包含每次就诊期间在医院记录的所有健康信息,包括诊断、实验室结果、临床数据和人口统计学信息。它利用一种创新的聚类进化分析 (CEA) 方法来分析复杂的 CHF 人群,其中每个对象都可能与许多变量相关联。我们定义了死亡率风险水平的子组,用于通过在十年内三个时间点对数据进行精细聚类来描述患者的疾病演变,并生成患者在不同时期的迁移模式。结果分别产生了 18、23 和 25 个聚类,分别对应第一次、第二次和第三次就诊,揭示了具有临床意义的小患者亚组。在后续的后处理阶段,我们确定了有意义的模式。分析产生了细粒度的患者聚类,分为几个有限的风险水平,包括几个高危患者的小尺寸组。重要的是,分析还产生了患者风险水平随时间变化的纵向模式。确定了四种疾病轨迹:下降、稳定状态、改善和混合进展。这是该工作的独特贡献。这种精细的划分和纵向见解有望极大地帮助心脏病专家定制个性化干预措施,以提高护理质量。心脏病专家可以利用这些结果发现以前未检测到的症状和疾病演变之间的关系,从而做出更明智的临床决策和有效的干预措施。