Emerging Applications of Deep Learning in Bone Tumors: Current Advances and Challenges

深度学习 人工智能 医学 机器学习 工作流程 分级(工程) 计算机科学 数据库 工程类 土木工程
作者
Xiaowen Zhou,Hua Wang,Chengyao Feng,Ran Xu,Yu He,Lan Li,Chao Tu
出处
期刊:Frontiers in Oncology [Frontiers Media]
卷期号:12 被引量:12
标识
DOI:10.3389/fonc.2022.908873
摘要

Deep learning is a subfield of state-of-the-art artificial intelligence (AI) technology, and multiple deep learning-based AI models have been applied to musculoskeletal diseases. Deep learning has shown the capability to assist clinical diagnosis and prognosis prediction in a spectrum of musculoskeletal disorders, including fracture detection, cartilage and spinal lesions identification, and osteoarthritis severity assessment. Meanwhile, deep learning has also been extensively explored in diverse tumors such as prostate, breast, and lung cancers. Recently, the application of deep learning emerges in bone tumors. A growing number of deep learning models have demonstrated good performance in detection, segmentation, classification, volume calculation, grading, and assessment of tumor necrosis rate in primary and metastatic bone tumors based on both radiological (such as X-ray, CT, MRI, SPECT) and pathological images, implicating a potential for diagnosis assistance and prognosis prediction of deep learning in bone tumors. In this review, we first summarized the workflows of deep learning methods in medical images and the current applications of deep learning-based AI for diagnosis and prognosis prediction in bone tumors. Moreover, the current challenges in the implementation of the deep learning method and future perspectives in this field were extensively discussed.

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