An Update on the Use of Artificial Intelligence in Digital Pathology for Oral Epithelial Dysplasia Research.

IF 3.2 Q2 PATHOLOGY Head & Neck Pathology Pub Date : 2024-05-10 DOI:10.1007/s12105-024-01643-4
Shahd A Alajaji, Zaid H Khoury, Maryam Jessri, James J Sciubba, Ahmed S Sultan
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Abstract

Introduction: Oral epithelial dysplasia (OED) is a precancerous histopathological finding which is considered the most important prognostic indicator for determining the risk of malignant transformation into oral squamous cell carcinoma (OSCC). The gold standard for diagnosis and grading of OED is through histopathological examination, which is subject to inter- and intra-observer variability, impacting accurate diagnosis and prognosis. The aim of this review article is to examine the current advances in digital pathology for artificial intelligence (AI) applications used for OED diagnosis.

Materials and methods: We included studies that used AI for diagnosis, grading, or prognosis of OED on histopathology images or intraoral clinical images. Studies utilizing imaging modalities other than routine light microscopy (e.g., scanning electron microscopy), or immunohistochemistry-stained histology slides, or immunofluorescence were excluded from the study. Studies not focusing on oral dysplasia grading and diagnosis, e.g., to discriminate OSCC from normal epithelial tissue were also excluded.

Results: A total of 24 studies were included in this review. Nineteen studies utilized deep learning (DL) convolutional neural networks for histopathological OED analysis, and 4 used machine learning (ML) models. Studies were summarized by AI method, main study outcomes, predictive value for malignant transformation, strengths, and limitations.

Conclusion: ML/DL studies for OED grading and prediction of malignant transformation are emerging as promising adjunctive tools in the field of digital pathology. These adjunctive objective tools can ultimately aid the pathologist in more accurate diagnosis and prognosis prediction. However, further supportive studies that focus on generalization, explainable decisions, and prognosis prediction are needed.

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人工智能在口腔上皮增生症数字病理学研究中的最新应用。
导言:口腔上皮发育不良(OED)是一种癌前组织病理学发现,被认为是确定恶性转变为口腔鳞状细胞癌(OSCC)风险的最重要预后指标。OED 诊断和分级的金标准是组织病理学检查,而组织病理学检查存在观察者之间和观察者内部的差异,从而影响了准确诊断和预后。这篇综述文章的目的是研究目前用于OED诊断的人工智能(AI)应用在数字病理学方面的进展:我们纳入了使用人工智能对组织病理学图像或口内临床图像进行 OED 诊断、分级或预后的研究。利用常规光学显微镜(如扫描电子显微镜)、免疫组化染色组织学切片或免疫荧光以外的成像模式的研究不在研究范围内。此外,不以口腔发育不良分级和诊断为重点的研究(如区分 OSCC 和正常上皮组织)也被排除在外:本综述共纳入 24 项研究。19项研究利用深度学习(DL)卷积神经网络进行组织病理学OED分析,4项研究使用机器学习(ML)模型。综述按人工智能方法、主要研究结果、恶性转化的预测价值、优势和局限性对研究进行了总结:用于 OED 分级和恶性转化预测的 ML/DL 研究正在成为数字病理学领域前景广阔的辅助工具。这些辅助性客观工具最终可帮助病理学家进行更准确的诊断和预后预测。然而,还需要进一步的支持性研究,重点是概括性、可解释的决定和预后预测。
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来源期刊
CiteScore
5.70
自引率
9.50%
发文量
99
期刊介绍: Head & Neck Pathology presents scholarly papers, reviews and symposia that cover the spectrum of human surgical pathology within the anatomic zones of the oral cavity, sinonasal tract, larynx, hypopharynx, salivary gland, ear and temporal bone, and neck. The journal publishes rapid developments in new diagnostic criteria, intraoperative consultation, immunohistochemical studies, molecular techniques, genetic analyses, diagnostic aids, experimental pathology, cytology, radiographic imaging, and application of uniform terminology to allow practitioners to continue to maintain and expand their knowledge in the subspecialty of head and neck pathology. Coverage of practical application to daily clinical practice is supported with proceedings and symposia from international societies and academies devoted to this field. Single-blind peer review The journal follows a single-blind review procedure, where the reviewers are aware of the names and affiliations of the authors, but the reviewer reports provided to authors are anonymous. Single-blind peer review is the traditional model of peer review that many reviewers are comfortable with, and it facilitates a dispassionate critique of a manuscript.
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