Department of PhotonicsCollege of Electrical and Computer EngineeringNational Yang Ming Chiao Tung University Hsinchu 30010 Taiwan.
Department of Orthopedic SurgeryWan Fang HospitalTaipei Medical University Taipei 110 Taiwan.
IEEE J Transl Eng Health Med. 2024 Mar 21;12:401-412. doi: 10.1109/JTEHM.2024.3368106. eCollection 2024.
Osteoporosis is a prevalent chronic disease worldwide, particularly affecting the aging population. The gold standard diagnostic tool for osteoporosis is Dual-energy X-ray Absorptiometry (DXA). However, the expensive cost of the DXA machine and the need for skilled professionals to operate it restrict its accessibility to the general public. This paper builds upon previous research and proposes a novel approach for rapidly screening bone density. The method involves utilizing near-infrared light to capture local body information within the human body. Deep learning techniques are employed to analyze the obtained data and extract meaningful insights related to bone density. Our initial prediction, utilizing multi-linear regression, demonstrated a strong correlation (r = 0.98, p-value = 0.003**) with the measured Bone Mineral Density (BMD) obtained from Dual-energy X-ray Absorptiometry (DXA). This indicates a highly significant relationship between the predicted values and the actual BMD measurements. A deep learning-based algorithm is applied to analyze the underlying information further to predict bone density at the wrist, hip, and spine. The prediction of bone densities in the hip and spine holds significant importance due to their status as gold-standard sites for assessing an individual's bone density. Our prediction rate had an error margin below 10% for the wrist and below 20% for the hip and spine bone density.
骨质疏松症是一种在全球范围内普遍存在的慢性疾病,尤其影响老年人群体。骨质疏松症的黄金标准诊断工具是双能 X 射线吸收法(DXA)。然而,DXA 机器昂贵的价格以及需要熟练的专业人员来操作它,限制了其在公众中的可及性。本文基于先前的研究,提出了一种快速筛查骨密度的新方法。该方法涉及利用近红外光来捕获人体内部的局部身体信息。深度学习技术用于分析所获得的数据,并提取与骨密度相关的有意义的见解。我们的初步预测结果表明,多线性回归分析与从双能 X 射线吸收法(DXA)获得的实际骨密度测量值(BMD)之间存在很强的相关性(r = 0.98,p 值= 0.003**)。这表明预测值与实际 BMD 测量值之间存在高度显著的关系。应用基于深度学习的算法进一步分析潜在信息,以预测手腕、臀部和脊柱的骨密度。对髋关节和脊柱的骨密度进行预测具有重要意义,因为它们是评估个体骨密度的黄金标准部位。我们的预测结果对于手腕骨密度的误差幅度低于 10%,对于髋部和脊柱骨密度的误差幅度低于 20%。