Chantzi Stefania L, Kosvyra Alexandra, Chouvarda Ioanna
Laboratory of Computing, Medical Informatics and Biomedical Imaging Technologies, School of Medicine, Aristotle University of Thessaloniki, 54124, Thessaloniki, Greece.
J Imaging Inform Med. 2025 Jan 6. doi: 10.1007/s10278-024-01377-3.
A scoping review was conducted to investigate the role of radiological imaging, particularly high-resolution computed tomography (HRCT), and artificial intelligence (AI) in diagnosing and prognosticating idiopathic pulmonary fibrosis (IPF). Relevant studies from the PubMed database were selected based on predefined inclusion and exclusion criteria. Two reviewers assessed study quality and analyzed data, estimating heterogeneity and publication bias. The analysis primarily focused on deep learning approaches for feature extraction from HRCT images, aiming to enhance diagnostic accuracy and efficiency. Radiomics, utilizing quantitative features extracted from images, were computed using various tools to improve precision in analysis. Validation methods such as k-fold cross-validation were employed to assess model robustness and generalizability. Findings revealed that radiologic patterns in interstitial lung disease hold prognostic significance for patient survival. However, the additional prognostic value of quantitative assessment of fibrosis extent remains uncertain. IPF poses a substantial challenge in respiratory medicine, necessitating advanced diagnostic and prognostic tools. Radiomics emerges as a valuable asset, offering insights into disease characteristics and aiding in disease classification. It contributes to understanding underlying pathophysiological processes, facilitating more effective management of pulmonary disorders. Future research should focus on clarifying the additional prognostic value of quantitative assessment and further refining AI-based diagnostic and prognostic models for IPF.
进行了一项范围综述,以研究放射影像学,特别是高分辨率计算机断层扫描(HRCT)和人工智能(AI)在特发性肺纤维化(IPF)诊断和预后评估中的作用。根据预定义的纳入和排除标准,从PubMed数据库中选择相关研究。两名评审员评估研究质量并分析数据,估计异质性和发表偏倚。分析主要集中于从HRCT图像中提取特征的深度学习方法,旨在提高诊断准确性和效率。利用从图像中提取的定量特征的放射组学,使用各种工具进行计算,以提高分析精度。采用k折交叉验证等验证方法来评估模型的稳健性和泛化能力。研究结果表明,间质性肺疾病的放射学模式对患者生存具有预后意义。然而,纤维化程度定量评估的额外预后价值仍不确定。IPF在呼吸医学中构成了重大挑战,需要先进的诊断和预后工具。放射组学成为一项有价值的资产,能够提供对疾病特征的见解并有助于疾病分类。它有助于理解潜在的病理生理过程,促进肺部疾病的更有效管理。未来的研究应侧重于阐明定量评估的额外预后价值,并进一步完善基于AI的IPF诊断和预后模型。