Frontiers in Cardiovascular Medicine (Jun 2025)

Development and external validation of a nomogram prediction model based on quantitative coronary angiography for predicting ischemic lesions: a multi-centre study

  • Shuai Yang,
  • Shuai Yang,
  • Shuang Leng,
  • Shuang Leng,
  • Zhouchi Wang,
  • Jiang Ming Fam,
  • Jiang Ming Fam,
  • Adrian Fatt Hoe Low,
  • Adrian Fatt Hoe Low,
  • Ru-San Tan,
  • Ru-San Tan,
  • Ping Chai,
  • Ping Chai,
  • Lynette Teo,
  • Lynette Teo,
  • Chee Yang Chin,
  • Chee Yang Chin,
  • John C. Allen,
  • Mark Yan-Yee Chan,
  • Mark Yan-Yee Chan,
  • Khung Keong Yeo,
  • Khung Keong Yeo,
  • Aaron Sung Lung Wong,
  • Aaron Sung Lung Wong,
  • Soo Teik Lim,
  • Soo Teik Lim,
  • Qinghua Wu,
  • Liang Zhong,
  • Liang Zhong,
  • Liang Zhong

DOI
https://doi.org/10.3389/fcvm.2025.1550550
Journal volume & issue
Vol. 12

Abstract

Read online

ObjectivesQuantitative coronary angiography (QCA) has significantly contributed to the diagnosis of coronary artery disease. This study aimed to construct and validate a QCA-based prediction model, represented as a nomogram, for predicting ischemic lesions defined by invasive fractional flow reserve (FFR) ≤ 0.80.MethodsIn this multi-centre study, we enrolled 220 patients with 303 interrogated vessels who underwent FFR measurements during clinically indicated invasive coronary angiography. QCA predictors for ischemic lesions were extracted to construct a nomogram model using Least Absolute Shrinkage and Selection Operator (LASSO) regression analysis of the development set (n = 113 patients). An external validation (n = 107 patients) was performed to assess the nomogram model's discrimination and consistency.ResultsLesion length, minimal lumen diameter, stenosis flow reserve, percent diameter stenosis by visual estimation, and weight were included as predictors in the nomogram. The nomogram yielded an area under the curve (AUC) of 0.922 and 0.912 at per-vessel and per-patient levels, respectively, in the development set. In the validation set, it achieved an AUC of 0.915 and 0.912 at per-vessel and per-patient levels, respectively. Per-vessel accuracy, sensitivity, and specificity derived from the nomogram were 86.5%, 88.2%, 86.2% in the development cohort and 84.2%, 85.5%, and 83.1% in the validation cohort. For per-patient analysis, the corresponding values were 85.8%, 85.7%, 86.0% in the development cohort and 82.2%, 83.3%, 81.1% in the validation cohort.ConclusionThe nomogram may be useful for predicting ischemic lesions using QCA measurements and the LASSO regression algorithm, with external validation indicating potential predictive value in cardiology care settings.

Keywords