New York University Grossman School of Medicine, New York University, New York, NY, 10016, USA.
Department of Radiology, Musculoskeletal Radiology, New York University Grossman School of Medicine, 660 1st Ave, 3rd Floor, Rm #313, New York, NY, 10016, USA.
Skeletal Radiol. 2022 Feb;51(2):239-243. doi: 10.1007/s00256-021-03802-y. Epub 2021 May 13.
Artificial intelligence and deep learning (DL) offer musculoskeletal radiology exciting possibilities in multiple areas, including image reconstruction and transformation, tissue segmentation, workflow support, and disease detection. Novel DL-based image reconstruction algorithms correcting aliasing artifacts, signal loss, and noise amplification with previously unobtainable effectiveness are prime examples of how DL algorithms deliver promised value propositions in musculoskeletal radiology. The speed of DL-based tissue segmentation promises great efficiency gains that may permit the inclusion of tissue compositional-based information routinely into radiology reports. Similarly, DL algorithms give rise to a myriad of opportunities for workflow improvements, including intelligent and adaptive hanging protocols, speech recognition, report generation, scheduling, precertification, and billing. The value propositions of disease-detecting DL algorithms include reduced error rates and increased productivity. However, more studies using authentic clinical workflow settings are necessary to fully understand the value of DL algorithms for disease detection in clinical practice. Successful workflow integration and management of multiple algorithms are critical for translating the value propositions of DL algorithms into clinical practice but represent a major roadblock for which solutions are critically needed. While there is no consensus about the most sustainable business model, radiology departments will need to carefully weigh the benefits and disadvantages of each commercially available DL algorithm. Although more studies are needed to understand the value and impact of DL algorithms on clinical practice, DL technology will likely play an important role in the future of musculoskeletal imaging.
人工智能和深度学习 (DL) 在多个领域为肌肉骨骼放射学带来了令人兴奋的可能性,包括图像重建和转换、组织分割、工作流程支持和疾病检测。基于 DL 的新型图像重建算法可以纠正混叠伪影、信号丢失和噪声放大,其效果以前是无法获得的,这是 DL 算法如何在肌肉骨骼放射学中提供有价值的承诺的主要例子。基于 DL 的组织分割的速度有望带来巨大的效率提升,这可能使组织成分信息常规地纳入放射学报告成为可能。同样,DL 算法为工作流程改进带来了无数机会,包括智能和自适应悬挂协议、语音识别、报告生成、调度、预认证和计费。疾病检测 DL 算法的价值主张包括降低错误率和提高生产力。然而,需要更多使用真实临床工作流程设置的研究来充分了解 DL 算法在临床实践中用于疾病检测的价值。成功整合工作流程和管理多个算法对于将 DL 算法的价值主张转化为临床实践至关重要,但这也是一个亟待解决的主要障碍。虽然对于最可持续的商业模式还没有共识,但放射科部门将需要仔细权衡每个商业可用的 DL 算法的利弊。尽管需要更多的研究来了解 DL 算法对临床实践的价值和影响,但 DL 技术很可能在肌肉骨骼成像的未来发挥重要作用。