A machine learning prediction model for Cardiac Amyloidosis using routine blood tests in patients with left ventricular hypertrophy.

Journal: Scientific reports
PMID:

Abstract

Current approaches for cardiac amyloidosis (CA) identification are time-consuming, labor-intensive, and present challenges in sensitivity and accuracy, leading to limited treatment efficacy and poor prognosis for patients. In this retrospective study, we aimed to leverage machine learning (ML) to create a diagnostic model for CA using data from routine blood tests. Our dataset included 6,563 patients with left ventricular hypertrophy, 261 of whom had been diagnosed with CA. We divided the dataset into training and testing cohorts, applying ML algorithms such as logistic regression, random forest, and XGBoost for automated learning and prediction. Our model's diagnostic accuracy was then evaluated against CA biomarkers, specifically serum-free light chains (FLCs). The model's interpretability was elucidated by visualizing the feature importance through the gain map. XGBoost outperformed both random forest and logistic regression in internal validation on the testing cohort, achieving an area under the curve (AUC) of 0.95 (95%CI: 0.92-0.97), sensitivity of 0.92 (95%CI: 0.86-0.98), specificity of 0.95 (95%CI: 0.94-0.97), and an F1 score of 0.89 (95%CI: 0.85-0.92). Its performance was also superior to the serum FLC-kappa and FLC-lambda combination (AUC of 0.88). Furthermore, XGBoost identified unique biomarker signatures indicative of multisystem dysfunction in CA patients, with significant changes in eGFR, FT3, cTnI, ANC, and NT-proBNP. This study develops a highly sensitive and accurate ML model for CA detection using routine clinical laboratory data, effectively streamlining diagnostic procedures, and providing valuable clinical insights and guiding future research into disease mechanisms.

Authors

  • Yuling Pan
    School of Laboratory Medicine, Hubei University of Chinese Medicine, 16 Huangjia Lake West Road, Wuhan, 430065, China.
  • Qingkun Fan
    Department of Medical Laboratory, Wuhan Asia Heart Hospital, Wuhan City, 430022, Hubei Province, China.
  • Yu Liang
    School of Software, Beijing Institute of Technology, Beijing 100081, China.
  • Yunfan Liu
    Department of Radiology, The Second Affiliated Hospital of Chongqing Medical University, Chongqing, China.
  • Haihang You
    Institute of Computing Technology, Chinese Academy of Sciences, Beijing, 100190, China; Zhongguancun Laboratory, Beijing 102206, China.
  • Chunzi Liang
    School of Laboratory Medicine, Hubei University of Chinese Medicine, 16 Huangjia Lake West Road, Wuhan, Hubei 430065, China. Electronic address: liangcz2021@hbtcm.edu.cn.