Technol Health Care. 2024;32(6):3801-3813. doi: 10.3233/THC-232043.
Schwann cell sheaths are the source of benign, slowly expanding tumours known as acoustic neuromas (AN). The diagnostic and treatment approaches for AN must be patient-centered, taking into account unique factors and preferences.
The purpose of this study is to investigate how machine learning and artificial intelligence (AI) can revolutionise AN management and diagnostic procedures.
A thorough systematic review that included peer-reviewed material from public databases was carried out. Publications on AN, AI, and deep learning up until December 2023 were included in the review's purview.
Based on our analysis, AI models for volume estimation, segmentation, tumour type differentiation, and separation from healthy tissues have been developed successfully. Developments in computational biology imply that AI can be used effectively in a variety of fields, including quality of life evaluations, monitoring, robotic-assisted surgery, feature extraction, radiomics, image analysis, clinical decision support systems, and treatment planning.
For better AN diagnosis and treatment, a variety of imaging modalities require the development of strong, flexible AI models that can handle heterogeneous imaging data. Subsequent investigations ought to concentrate on reproducing findings in order to standardise AI approaches, which could transform their use in medical environments.
施旺细胞鞘是良性、缓慢生长的肿瘤,称为听神经瘤(AN)。AN 的诊断和治疗方法必须以患者为中心,考虑到独特的因素和偏好。
本研究旨在探讨机器学习和人工智能(AI)如何彻底改变 AN 的管理和诊断程序。
进行了全面的系统评价,包括来自公共数据库的同行评审材料。该综述涵盖了截至 2023 年 12 月关于 AN、AI 和深度学习的出版物。
根据我们的分析,已经成功开发了用于体积估计、分割、肿瘤类型区分和与健康组织分离的 AI 模型。计算生物学的发展表明,AI 可以有效地应用于各种领域,包括生活质量评估、监测、机器人辅助手术、特征提取、放射组学、图像分析、临床决策支持系统和治疗计划。
为了更好地诊断和治疗 AN,各种成像方式需要开发强大、灵活的 AI 模型,以处理异构成像数据。后续的研究应该集中在复制发现上,以标准化 AI 方法,这可能会改变它们在医疗环境中的应用。