Grignaffini Flavia, Barbuto Francesco, Troiano Maurizio, Piazzo Lorenzo, Simeoni Patrizio, Mangini Fabio, De Stefanis Cristiano, Onetti Muda Andrea, Frezza Fabrizio, Alisi Anna
Department of Information Engineering, Electronics and Telecommunications (DIET), "La Sapienza", University of Rome, 00184 Rome, Italy.
Research Unit of Genetics of Complex Phenotypes, Bambino Gesù Children's Hospital, IRCCS, 00165 Rome, Italy.
Diagnostics (Basel). 2024 Feb 10;14(4):388. doi: 10.3390/diagnostics14040388.
Digital pathology (DP) has begun to play a key role in the evaluation of liver specimens. Recent studies have shown that a workflow that combines DP and artificial intelligence (AI) applied to histopathology has potential value in supporting the diagnosis, treatment evaluation, and prognosis prediction of liver diseases. Here, we provide a systematic review of the use of this workflow in the field of hepatology. Based on the PRISMA 2020 criteria, a search of the PubMed, SCOPUS, and Embase electronic databases was conducted, applying inclusion/exclusion filters. The articles were evaluated by two independent reviewers, who extracted the specifications and objectives of each study, the AI tools used, and the results obtained. From the 266 initial records identified, 25 eligible studies were selected, mainly conducted on human liver tissues. Most of the studies were performed using whole-slide imaging systems for imaging acquisition and applying different machine learning and deep learning methods for image pre-processing, segmentation, feature extractions, and classification. Of note, most of the studies selected demonstrated good performance as classifiers of liver histological images compared to pathologist annotations. Promising results to date bode well for the not-too-distant inclusion of these techniques in clinical practice.
数字病理学(DP)已开始在肝脏标本评估中发挥关键作用。最近的研究表明,将DP与应用于组织病理学的人工智能(AI)相结合的工作流程在支持肝脏疾病的诊断、治疗评估和预后预测方面具有潜在价值。在此,我们对该工作流程在肝病学领域的应用进行系统综述。基于PRISMA 2020标准,我们对PubMed、SCOPUS和Embase电子数据库进行了检索,并应用了纳入/排除筛选条件。文章由两名独立评审员进行评估,他们提取了每项研究的具体内容和目标、所使用的AI工具以及获得的结果。从最初识别出的266条记录中,挑选出了25项符合条件的研究,这些研究主要在人体肝脏组织上进行。大多数研究使用全切片成像系统进行图像采集,并应用不同的机器学习和深度学习方法进行图像预处理、分割、特征提取和分类。值得注意的是,与病理学家的注释相比,大多数所选研究作为肝脏组织学图像分类器表现出良好性能。迄今为止取得的喜人成果预示着这些技术在不久的将来有望纳入临床实践。