Angela Hussain, Cadence F. Lee, Eric Hu, Farid Amirouche
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引用次数: 0
摘要
人工智能(AI)和深度学习正在成为诊断和放射医学领域日益强大的工具。深度学习已被用于自动检测胸片肺炎、糖尿病视网膜病变、乳腺癌、皮肤癌分类和转移性淋巴腺病检测,其诊断可靠性堪比医学专家。在《世界矫形外科杂志》(World Journal of Orthopedics)的文章中,作者应用了一种自动人工智能辅助技术来确定足外翻角度(HVA),以评估HV足畸形。作者利用 U-net 神经网络构建了一种算法,用于根据前胸高分辨率射线照片对 HV 足畸形进行模式识别。将深度学习算法的性能与临床专家的手动性能进行了比较,并评估了临床医生与医生之间的差异。作者发现,人工智能工具足以评估 HVA,并建议将该系统作为提高临床效率的工具。虽然还需要进一步完善才能为更复杂的足部病理建立自动算法,但这项工作为越来越多的证据支持人工智能作为一种强大的诊断工具增添了新的内容。
Deep learning automation of radiographic patterns for hallux valgus diagnosis
Artificial intelligence (AI) and deep learning are becoming increasingly powerful tools in diagnostic and radiographic medicine. Deep learning has already been utilized for automated detection of pneumonia from chest radiographs, diabetic retinopathy, breast cancer, skin carcinoma classification, and metastatic lymphadenopathy detection, with diagnostic reliability akin to medical experts. In the World Journal of Orthopedics article, the authors apply an automated and AI-assisted technique to determine the hallux valgus angle (HVA) for assessing HV foot deformity. With the U-net neural network, the authors constructed an algorithm for pattern recognition of HV foot deformity from anteroposterior high-resolution radiographs. The performance of the deep learning algorithm was compared to expert clinician manual performance and assessed alongside clinician-clinician variability. The authors found that the AI tool was sufficient in assessing HVA and proposed the system as an instrument to augment clinical efficiency. Though further sophistication is needed to establish automated algorithms for more complicated foot pathologies, this work adds to the growing evidence supporting AI as a powerful diagnostic tool.