Zhou Chunqing, Xiao Yi, Li Longxi, Liu Yanyun, Zhu Fubao, Zhou Weihua, Yi Xiaoping, Zhao Min
Department of Nuclear Medicine, The Third Xiangya Hospital of Central South University, No.138, Tongzipo Road, Changsha, Hunan Province, 410013, China.
Department of Nuclear Medicine, Xiangya Hospital, Central South University, Changsha, China.
J Imaging Inform Med. 2024 Dec;37(6):2784-2793. doi: 10.1007/s10278-024-01145-3. Epub 2024 May 28.
Personalized management involving heart failure (HF) etiology is crucial for better prognoses. We aim to evaluate the utility of a radiomics nomogram based on gated myocardial perfusion imaging (GMPI) in distinguishing ischemic from non-ischemic origins of HF. A total of 172 heart failure patients with reduced left ventricular ejection fraction (HFrEF) who underwent GMPI scan were divided into training (n = 122) and validation sets (n = 50) based on chronological order of scans. Radiomics features were extracted from the resting GMPI. Four machine learning algorithms were used to construct radiomics models, and the model with the best performances were selected to calculate the Radscore. A radiomics nomogram was constructed based on the Radscore and independent clinical factors. Finally, the model performance was validated using operating characteristic curves, calibration curve, decision curve analysis, integrated discrimination improvement values (IDI), and the net reclassification index (NRI). Three optimal radiomics features were used to build a radiomics model. Total perfusion deficit (TPD) was identified as the independent factors of conventional GMPI metrics for building the GMPI model. In the validation set, the radiomics nomogram integrating the Radscore, age, systolic blood pressure, and TPD significantly outperformed the GMPI model in distinguishing ischemic cardiomyopathy (ICM) from non-ischemic cardiomyopathy (NICM) (AUC 0.853 vs. 0.707, p = 0.038). IDI analysis indicated that the nomogram improved diagnostic accuracy by 28.3% compared to the GMPI model in the validation set. By combining radiomics signatures with clinical indicators, we developed a GMPI-based radiomics nomogram that helps to identify the ischemic etiology of HFrEF.
基于心力衰竭(HF)病因的个性化管理对于改善预后至关重要。我们旨在评估基于门控心肌灌注成像(GMPI)的放射组学列线图在区分HF缺血性与非缺血性病因方面的效用。共有172例左心室射血分数降低的心力衰竭患者(HFrEF)接受了GMPI扫描,根据扫描时间顺序分为训练集(n = 122)和验证集(n = 50)。从静息GMPI中提取放射组学特征。使用四种机器学习算法构建放射组学模型,并选择性能最佳的模型计算Radscore。基于Radscore和独立临床因素构建放射组学列线图。最后,使用操作特征曲线、校准曲线、决策曲线分析、综合鉴别改善值(IDI)和净重新分类指数(NRI)验证模型性能。使用三个最佳放射组学特征构建放射组学模型。总灌注缺损(TPD)被确定为构建GMPI模型的传统GMPI指标的独立因素。在验证集中,整合Radscore、年龄、收缩压和TPD的放射组学列线图在区分缺血性心肌病(ICM)和非缺血性心肌病(NICM)方面显著优于GMPI模型(AUC 0.853对0.707,p = 0.038)。IDI分析表明,与验证集中的GMPI模型相比,列线图将诊断准确性提高了28.3%。通过将放射组学特征与临床指标相结合,我们开发了一种基于GMPI的放射组学列线图,有助于识别HFrEF的缺血性病因。