Resmi S L, Hashim V, Mohammed Jesna, Dileep P N
Department of Mechanical Engineering, TKM College of Engineering, Kollam, Kerala, India.
Appl Bionics Biomech. 2023 Apr 28;2023:1123953. doi: 10.1155/2023/1123953. eCollection 2023.
Though treatable, osteoporosis continues as a substantially underdiagnosed and undertreated condition. Bone mineral density (BMD) monitoring will definitely aid in the prediction and prevention of medical emergencies arising from osteoporosis. Although quantitative computed tomography (QCT) is one of the most widely accepted tools for measuring BMD, it lacks the contribution of bone architecture in predicting BMD, which is significant as aging progresses. This paper presents an innovative approach for the prediction of BMD incorporating bone architecture that involves no extra cost, time, and exposure to severe radiation.
In this approach, the BMD is predicted using clinical CT scan images taken for other indications based on image processing and artificial neural network (ANN). The network used in this study is a standard backpropagation neural network having five input neurons with one hidden layer having 40 neurons with a tan-sigmoidal activation function. The Digital Imaging and Communications in Medicine (DICOM) image properties extracted from QCT of human skull and femur bone of rabbit that are closely associated with the BMD are used as input parameters of the ANN. The density value of the bone which is computed from the Hounsfield units of QCT scan image through phantom calibration is used as the target value for training the network.
The ANN model predicts the density values using the image properties from the clinical CT of the same rabbit femur bone and is compared with the density value computed from QCT scan. The correlation coefficient between predicted BMD and QCT density valued to 0.883. The proposed network can assist clinicians in identifying early stage of osteoporosis and devise suitable strategies to improve BMD with no additional cost.
骨质疏松症虽然可以治疗,但仍然是一种诊断严重不足和治疗不足的疾病。骨密度(BMD)监测肯定有助于预测和预防由骨质疏松症引起的医疗紧急情况。尽管定量计算机断层扫描(QCT)是测量骨密度最广泛接受的工具之一,但它在预测骨密度时缺乏骨结构的贡献,而随着年龄的增长,骨结构的贡献变得很重要。本文提出了一种结合骨结构预测骨密度的创新方法,该方法无需额外成本、时间,也无需暴露于强辐射。
在这种方法中,基于图像处理和人工神经网络(ANN),使用为其他适应症拍摄的临床CT扫描图像来预测骨密度。本研究中使用的网络是一个标准的反向传播神经网络,有五个输入神经元,一个隐藏层有40个神经元,激活函数为正切-西格蒙德函数。从人类头骨和兔股骨的QCT中提取的与骨密度密切相关的医学数字成像和通信(DICOM)图像属性用作ANN的输入参数。通过体模校准从QCT扫描图像的亨氏单位计算出的骨密度值用作训练网络的目标值。
ANN模型使用同一只兔股骨临床CT的图像属性预测密度值,并与QCT扫描计算出的密度值进行比较。预测骨密度与QCT密度值之间的相关系数为0.883。所提出的网络可以帮助临床医生识别骨质疏松症的早期阶段,并制定合适的策略来提高骨密度,而无需额外成本。