国际口腔医学杂志 ›› 2025, Vol. 52 ›› Issue (5): 579-585.doi: 10.7518/gjkq.2025052
Xiaojie Zhou1(),Benxiang Hou2(
)
摘要:
龋病发病率高,及时诊断是临床治疗的基础。随着深度学习技术在自然图像处理领域的突破,基于深度学习利用口腔医学影像进行龋病自动诊断的方法受到了广泛关注。基于深度学习的龋病诊断方法在龋病识别、检测与分割两大类典型任务中取得了进展,本文从多个角度对两类任务的深度学习方法进行综述与对比,对龋病诊断数据集以及面临的挑战进行分析,有助于龋病智能诊断的研究。
中图分类号:
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