Department of Orthopedics and Traumatology, Başkent University, Adana Turgut Noyan Research and Training Centre, Adana, Turkey.
Turkcell Technology, Artificial Intelligence Digital Analytic Solutions, İstanbul, Turkey.
Acta Orthop Traumatol Turc. 2024 Jan;58(1):4-9. doi: 10.5152/j.aott.2024.23065.
This study aimed to compare an algorithm developed for diagnosing hip fractures on plain radiographs with the physicians involved in diagnosing hip fractures.
Radiographs labeled as fractured (n=182) and non-fractured (n=542) by an expert on proximal femur fractures were included in the study. General practitioners in the emergency department (n=3), emergency medicine (n=3), radiologists (n=3), orthopedic residents (n=3), and orthopedic surgeons (n=3) were included in the study as the labelers, who labeled the presence of fractures on the right and left sides of the proximal femoral region on each anteroposterior (AP) plain pelvis radiograph as fractured or non-fractured. In addition, all the radiographs were evaluated using an artificial intelligence (AI) algorithm consisting of 3 AI models and a majority voting technique. Each AI model evaluated each graph separately, and majority voting determined the final decision as the majority of the outputs of the 3 AI models. The results of the AI algorithm and labelling physicians included in the study were compared with the reference evaluation.
Based on F-1 scores, here are the average scores of the group: majority voting (0.942) > orthopedic surgeon (0.938) > AI models (0.917) > orthopedic resident (0.858) > emergency medicine (0.758) > general practitioner (0.689) > radiologist (0.677).
The AI algorithm developed in our previous study may help recognize fractures in AP pelvis in plain radiography in the emergency department for non-orthopedist physicians.
Level IV, Diagnostic Study.
本研究旨在比较一种用于诊断 X 线平片髋部骨折的算法与参与髋部骨折诊断的医生的表现。
研究纳入了由股骨近端骨折专家标记为骨折(n=182)和未骨折(n=542)的 X 射线。急诊部的全科医生(n=3)、急诊医学(n=3)、放射科医生(n=3)、骨科住院医师(n=3)和骨科医生(n=3)作为标签者,他们在每一张前后位(AP)骨盆平片的股骨近端区域的左右两侧标记骨折的存在情况,标记为骨折或未骨折。此外,所有 X 射线均使用由 3 个 AI 模型和多数投票技术组成的人工智能(AI)算法进行评估。每个 AI 模型分别评估每张图像,多数投票决定最终决策为 3 个 AI 模型的输出的多数。将 AI 算法和研究中包含的标记医生的结果与参考评估进行比较。
根据 F-1 分数,各小组的平均分数如下:多数投票(0.942)>骨科医生(0.938)>AI 模型(0.917)>骨科住院医师(0.858)>急诊医学(0.758)>全科医生(0.689)>放射科医生(0.677)。
我们之前研究中开发的 AI 算法可能有助于非骨科医生在急诊室识别 X 线平片的 AP 骨盆骨折。
IV 级,诊断研究。