基于深度学习的人工智能辅助诊断、评估和治疗软组织肉瘤

Ruiling Xu , Jinxin Tang , Chenbei Li , Hua Wang , Lan Li , Yu He , Chao Tu , Zhihong Li
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引用次数: 0

摘要

软组织肉瘤(STS)是一组异质性间质肿瘤,一般根据组织病理学进行分类。尽管软组织肉瘤的发病率和流行率都很罕见,但通常与预后不良和高死亡率相关。早期准确诊断 STS 对 STS 的临床治疗至关重要。深度学习(DL)是人工智能的一种亚型,已被用于协助医疗专业人员针对特定情况优化个性化治疗,尤其是在图像分析方面。最近,新出现的研究表明,基于医学影像的深度学习应用可大幅提高临床医生对 STS 的识别、诊断、治疗和预后预测的准确性和效率,从而促进临床决策。本文旨在从数据获取、算法和模型建立等方面广泛总结近年来基于 DL 的人工智能在 STS 中的应用。此外,还阐述了通过迁移学习和生成式对抗网络(GAN)对模型进行强化,以实现数据扩增。值得注意的是,高质量的数据、准确的注释以及优化的算法性能对 DL 在 STS 中的临床应用至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Deep learning-based artificial intelligence for assisting diagnosis, assessment and treatment in soft tissue sarcomas

Deep learning-based artificial intelligence for assisting diagnosis, assessment and treatment in soft tissue sarcomas

Soft tissue sarcomas (STSs) represent a group of heterogeneous mesenchymal tumors of which are generally classified as per the histopathology. Despite being rare in incidence and prevalence, STSs are usually correlated with unfavorable prognosis and high mortality rate. Early and accurate diagnosis of STSs are critical in clinical management of STSs. Deep learning (DL) refers to a subtype of artificial intelligence that has been adopted to assist healthcare professionals to optimize personalized treatment for a given situation, particularly in image analysis. Recently, emerging studies have demonstrated that application of DL based on medical images could substantially improve the accuracy and efficiency of clinicians to the identification, diagnosis, treatment, and prognosis prediction of STSs, and thereby facilitating the clinical decision-making. Herein, we aimed to extensively summarize the recent applications of DL-based artificial intelligence in STSs from the aspects of data acquisition, algorithm, and model establishment. Besides, the reinforcement of the model by transfer learning and generative adversarial network (GAN) for data augmentation has also been elaborated. It is worth noting that high-quality data with accurate annotations, as well as optimized algorithmic performance are pivotal in the clinical application of DL in STSs.

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