As global population aging intensifies, there is growing interest in the study of biological age. Bones have long been used to evaluate biological age, and the decline in bone density with age is a well-recognized phenomenon in adults. However, the pattern of this decline remains controversial, making it difficult to serve as a reliable indicator of the aging process. Here we present a novel AI-driven statistical method to assess the bone density, and a discovery that the bone mass distribution in trabecular bone of vertebrae follows a non-Gaussian, unimodal, and skewed distribution in CT images. The statistical mode of the distribution is defined as the measure of bone mass, which is a groundbreaking assessment of bone density, named Trabecular Bone Density (TBD). The dataset of CT images are collected from 1,719 patients who underwent PET/CT scans in three hospitals, in which a subset of the dataset is used for AI model training and generalization. Based upon the cases, we demonstrate that the pattern of bone density declining with aging exhibits a consistent trend of exponential decline across sexes and age groups using TBD assessment. The developed AI-driven statistical method blazes a trail in the field of AI for reliable quantitative computation and AI for medicine. The findings suggest that human aging is a gradual process, with the rate of decline slowing progressively over time, which will provide a valuable basis for scientific prediction of life expectancy.
翻译:随着全球人口老龄化加剧,对生物年龄的研究日益受到关注。骨骼长期被用于评估生物年龄,而骨密度随年龄下降是成年人中公认的现象。然而,这种下降的模式仍存在争议,使其难以作为衰老过程的可靠指标。本文提出一种新型的人工智能驱动统计方法来评估骨密度,并发现椎体松质骨中的骨量分布在CT图像中呈现非高斯、单峰且偏态的分布特征。该分布的统计众数被定义为骨量的度量指标,这是一种突破性的骨密度评估方法,命名为松质骨密度。CT图像数据集采集自三家医院接受PET/CT扫描的1,719例患者,其中部分数据用于人工智能模型的训练与泛化。基于这些病例,我们通过TBD评估证明:骨密度随衰老下降的模式在不同性别和年龄组中均呈现出一致的指数衰减趋势。所开发的人工智能驱动统计方法为可靠定量计算的人工智能及医疗人工智能领域开辟了新路径。研究结果表明人类衰老是一个渐进过程,其衰退速率随时间推移逐渐减缓,这将为科学预测预期寿命提供重要依据。