Masayoshi Kanato, Hashimoto Masahiro, Toda Naoki, Mori Hirozumi, Kobayashi Goh, Haque Hasnine, Furuya Kohei, Watanabe Takahiro, Jinzaki Masahiro
Department of Radiology, Keio University School of Medicine, Tokyo, Japan.
GE Healthcare, Tokyo, Japan.
Jpn J Radiol. 2025 May 5. doi: 10.1007/s11604-025-01772-y.
This study aims to elucidate correlation between heart volume on computed tomography (CT) and various health checkup examination data in the general population. Furthermore, this study aims to examine the utility of a deep-learning segmentation tool in the data-driven analysis of CT big data.
Health checkup examination data and CT images acquired in 2013 and 2018 were retrospectively analyzed. We first quantified heart volume using a public deep-learning model, TotalSegmentator. The accuracy of segmentation was evaluated using Dice score on 30 randomly chosen images and annotation by a radiologist. Then, Spearman's partial correlation was calculated for 58 numerical items, and the analysis of covariance was performed for 13 categorical items, adjusting for the effect of gender, medication, height, weight, abdominal circumference, and age. The variables found to be significant proceeded to longitudinal analysis.
In the dataset, 7993 records were eligible for cross-sectional analysis and 1306 individuals were eligible for longitudinal analysis. Pulse rate was most strongly inversely correlated with the heart volume (Spearman's correlation coefficients ranging from - 0.29 to - 0.33). A 10 bpm increase in pulse rate was correlated with roughly a 0.5 percentage point decrease in the cardiothoracic ratio. Hemoglobin, hematocrit, total protein, albumin, and cholinesterase also showed weak inverse correlation. Five-year longitudinal analysis corroborated these findings.
We found that pulse rate was the strongest covariate of the heart volume on CT, rather than other cardiovascular-related variables such as blood pressure. The study also demonstrated the feasibility and utility of the artificial intelligence-assisted data-driven research on CT big data.
本研究旨在阐明普通人群中计算机断层扫描(CT)心脏容积与各种健康检查数据之间的相关性。此外,本研究旨在检验深度学习分割工具在CT大数据的数据驱动分析中的效用。
回顾性分析2013年和2018年获取的健康检查数据和CT图像。我们首先使用公共深度学习模型TotalSegmentator对心脏容积进行量化。在30张随机选择的图像上使用Dice分数评估分割准确性,并由放射科医生进行标注。然后,对58个数值项目计算Spearman偏相关,并对13个分类项目进行协方差分析,调整性别、用药、身高、体重、腹围和年龄的影响。发现具有显著意义的变量进行纵向分析。
在数据集中,7993条记录符合横断面分析条件,1306名个体符合纵向分析条件。脉搏率与心脏容积的负相关性最强(Spearman相关系数范围为-0.29至-0.33)。脉搏率每增加10次/分钟,心胸比率大约降低0.5个百分点。血红蛋白、血细胞比容、总蛋白、白蛋白和胆碱酯酶也显示出弱负相关。五年纵向分析证实了这些发现。
我们发现,脉搏率是CT上心脏容积的最强协变量,而非其他心血管相关变量如血压。该研究还证明了人工智能辅助的CT大数据数据驱动研究的可行性和效用。