Overgaard Benjamin Schultz, Christensen Anders Bossel Holst, Terslev Lene, Savarimuthu Thiusius Rajeeth, Just Søren Andreas
Section of Rheumatology, Department of Medicine, Svendborg Hospital - Odense University Hospital, Svendborg, Denmark.
ROPCA ApS, Odense, Denmark.
Front Med (Lausanne). 2024 Mar 4;11:1297088. doi: 10.3389/fmed.2024.1297088. eCollection 2024.
To develop an artificial intelligence (AI) model able to perform both segmentation of hand joint ultrasound images for osteophytes, bone, and synovium and perform osteophyte severity scoring following the EULAR-OMERACT grading system (EOGS) for hand osteoarthritis (OA).
One hundred sixty patients with pain or reduced function of the hands were included. Ultrasound images of the metacarpophalangeal (MCP), proximal interphalangeal (PIP), distal interphalangeal (DIP), and first carpometacarpal (CMC1) joints were then manually segmented for bone, synovium and osteophytes and scored from 0 to 3 according to the EOGS for OA. Data was divided into a training, validation, and test set. The AI model was trained on the training data to perform bone, synovium, and osteophyte identification on the images. Based on the manually performed image segmentation, an AI was trained to classify the severity of osteophytes according to EOGS from 0 to 3. Percent Exact Agreement (PEA) and Percent Close Agreement (PCA) were assessed on individual joints and overall. PCA allows a difference of one EOGS grade between doctor assessment and AI.
A total of 4615 ultrasound images were used for AI development and testing. The developed AI model scored on the test set for the MCP joints a PEA of 76% and PCA of 97%; for PIP, a PEA of 70% and PCA of 97%; for DIP, a PEA of 59% and PCA of 94%, and CMC a PEA of 50% and PCA of 82%. Combining all joints, we found a PEA between AI and doctor assessments of 68% and a PCA of 95%.
The developed AI model can perform joint ultrasound image segmentation and severity scoring of osteophytes, according to the EOGS. As proof of concept, this first version of the AI model is successful, as the agreement performance is slightly higher than previously found agreements between experts when assessing osteophytes on hand OA ultrasound images. The segmentation of the image makes the AI explainable to the doctor, who can immediately see why the AI applies a given score. Future validation in hand OA cohorts is necessary though.
开发一种人工智能(AI)模型,该模型能够对手关节超声图像中的骨赘、骨骼和滑膜进行分割,并根据欧洲抗风湿病联盟-骨关节炎研究学会(EULAR-OMERACT)分级系统(EOGS)对手部骨关节炎(OA)的骨赘严重程度进行评分。
纳入160例手部疼痛或功能减退的患者。然后对手掌指关节(MCP)、近端指间关节(PIP)、远端指间关节(DIP)和第一腕掌关节(CMC1)的超声图像进行骨骼、滑膜和骨赘的手动分割,并根据OA的EOGS从0到3进行评分。数据分为训练集、验证集和测试集。在训练数据上训练AI模型,以对图像中的骨骼、滑膜和骨赘进行识别。基于手动进行的图像分割,训练一个AI根据EOGS将骨赘的严重程度从0到3进行分类。对各个关节和总体评估百分比精确一致性(PEA)和百分比接近一致性(PCA)。PCA允许医生评估和AI之间的EOGS等级相差一级。
总共4615张超声图像用于AI开发和测试。开发的AI模型在测试集上对MCP关节的评分中,PEA为76%,PCA为97%;对于PIP关节,PEA为70%,PCA为97%;对于DIP关节,PEA为59%,PCA为94%,对于CMC关节,PEA为50%,PCA为82%。综合所有关节,我们发现AI与医生评估之间的PEA为68%,PCA为95%。
开发的AI模型可以根据EOGS对手关节超声图像进行分割并对骨赘严重程度进行评分。作为概念验证,AI模型的这个第一版本是成功的,因为在评估手部OA超声图像上的骨赘时,一致性表现略高于先前专家之间的一致性。图像分割使AI对医生来说是可解释的,医生可以立即看到AI给出给定分数的原因。不过,未来在手OA队列中的验证是必要的。