Key Laboratory of Universal Wireless Communications, Ministry of Education, Beijing University of Posts and Telecommunications, Beijing, China.
Arthritis Clinic and Research Center, Peking University People's Hospital, Beijing, China.
Med Phys. 2023 Oct;50(10):6259-6268. doi: 10.1002/mp.16424. Epub 2023 Apr 17.
Kashin-Beck disease (KBD) is a severe arthropathy that causes deformity. Patients with advanced stages of KBD often show symptoms, such as short stature. Early-stage diagnosis and treatment can effectively prevent the disease from worsening. Diagnosis of early-stage patients is usually made by X-ray examination. However, the time-consuming image recognition and the lack of professional doctors may delay the patient's condition. Therefore, a method that can efficiently complete the auxiliary diagnosis is necessary.
This study presents a KBD auxiliary diagnosis method based on radiographs, which uses deep learning to locate potential lesion regions and extract features for accurate diagnosis.
This work presents a method that relies on hand radiographs to locate eight regions of the potential lesion (RoPL) and finally make the KBD auxiliary diagnosis. The localization of RoPL is achieved through a two-step model, with the first step predicting a rough location and a deep convolutional neural network (DCNN) with attention mechanism used to generate precise center coordinates based on the previous step's results. Based on the localization result, regional features are extracted, which provides information about the joints and textures of RoPL from a finer granularity. Another DCNN is utilized to obtain general features from hand radiographs, which provide morphological and structural information about the entire hand bone These features offer a concatenated feature for categorization to raise accuracy. A doctor-like approach is adopted to diagnose based on regional features to enhance performance, and a final decision is made using a vote that considers diagnostic outcomes from all aspects. The dataset used in our study was collected by our research team in KBD-endemic areas of Tibet since 2017, containing 373 diseased and 764 normal images.
Our model guarantees that over 95% of the predicted coordinates are within five pixels of the real coordinates according to Euclidean distance. The accuracy of the diagnostic network achieved 91.3%, with precision and recall achieving 83% and 87%, respectively. Compared to the approach without exact localization of the illness region on the same test set, our method achieved a roughly 6% increase in accuracy and nearly 30% increase in recall rate.
Based on hand radiographs, this study suggests a novel method for KBD diagnosis. The high-precision localization network guarantees precise extraction of lesion-prone regional features, and the multi-scale features and innovative classification method further enhance model performance compared to related approaches.
大骨节病(KBD)是一种严重的关节病,会导致畸形。晚期 KBD 患者常出现身材矮小等症状。早期诊断和治疗可以有效防止病情恶化。早期患者的诊断通常通过 X 射线检查进行。然而,耗时的图像识别和缺乏专业医生可能会延误患者的病情。因此,需要一种能够高效完成辅助诊断的方法。
本研究提出了一种基于 X 射线的 KBD 辅助诊断方法,该方法使用深度学习定位潜在病变区域并提取特征以进行准确诊断。
本工作提出了一种基于手部 X 射线图像定位 8 个潜在病变区域(RoPL)并最终进行 KBD 辅助诊断的方法。RoPL 的定位通过两步模型实现,第一步预测大致位置,第二步使用带有注意力机制的深度卷积神经网络(DCNN)根据前一步的结果生成精确的中心坐标。基于定位结果,提取区域特征,从更细的粒度获取 RoPL 关节和纹理的信息。另一个 DCNN 用于从手部 X 射线图像中获取一般特征,提供整个手部骨骼的形态和结构信息。这些特征提供了一个分类的串联特征,以提高准确性。采用类似医生的方法基于区域特征进行诊断,以提高性能,并根据所有方面的诊断结果进行投票做出最终决策。本研究使用的数据集是由我们的研究团队于 2017 年在西藏大骨节病流行地区收集的,包含 373 例患病和 764 例正常图像。
根据欧几里得距离,我们的模型保证预测坐标中超过 95%的坐标与真实坐标相差不超过 5 个像素。诊断网络的准确率达到 91.3%,精度和召回率分别达到 83%和 87%。与在同一测试集上不精确定位疾病区域的方法相比,我们的方法的准确率提高了约 6%,召回率提高了近 30%。
基于手部 X 射线图像,本研究提出了一种新的 KBD 诊断方法。高精度的定位网络保证了病变易发区域特征的精确提取,多尺度特征和创新的分类方法与相关方法相比进一步提高了模型性能。