Department of Biomaterials, Bioengineering Institute, New York University, New York, New York.
Department of Oral and Maxillofacial Pathology, Radiology and Medicine, New York University College of Dentistry, New York, New York.
Cancer Cytopathol. 2020 Mar;128(3):207-220. doi: 10.1002/cncy.22236. Epub 2020 Feb 7.
The effective detection and monitoring of potentially malignant oral lesions (PMOL) are critical to identifying early-stage cancer and improving outcomes. In the current study, the authors described cytopathology tools, including machine learning algorithms, clinical algorithms, and test reports developed to assist pathologists and clinicians with PMOL evaluation.
Data were acquired from a multisite clinical validation study of 999 subjects with PMOLs and oral squamous cell carcinoma (OSCC) using a cytology-on-a-chip approach. A machine learning model was trained to recognize and quantify the distributions of 4 cell phenotypes. A least absolute shrinkage and selection operator (lasso) logistic regression model was trained to distinguish PMOLs and cancer across a spectrum of histopathologic diagnoses ranging from benign, to increasing grades of oral epithelial dysplasia (OED), to OSCC using demographics, lesion characteristics, and cell phenotypes. Cytopathology software was developed to assist pathologists in reviewing brush cytology test results, including high-content cell analyses, data visualization tools, and results reporting.
Cell phenotypes were determined accurately through an automated cytological assay and machine learning approach (99.3% accuracy). Significant differences in cell phenotype distributions across diagnostic categories were found in 3 phenotypes (type 1 ["mature squamous"], type 2 ["small round"], and type 3 ["leukocytes"]). The clinical algorithms resulted in acceptable performance characteristics (area under the curve of 0.81 for benign vs mild dysplasia and 0.95 for benign vs malignancy).
These new cytopathology tools represent a practical solution for rapid PMOL assessment, with the potential to facilitate screening and longitudinal monitoring in primary, secondary, and tertiary clinical care settings.
有效检测和监测潜在恶性口腔病变(PMOL)对于识别早期癌症和改善预后至关重要。在本研究中,作者描述了细胞学工具,包括机器学习算法、临床算法和开发用于协助病理学家和临床医生评估 PMOL 的检测报告。
使用细胞学芯片方法,从 999 名 PMOL 和口腔鳞状细胞癌(OSCC)患者的多地点临床验证研究中获取数据。训练了一个机器学习模型,以识别和量化 4 种细胞表型的分布。使用最小绝对收缩和选择算子(lasso)逻辑回归模型,通过对从良性到不同程度的口腔上皮异型增生(OED),再到 OSCC 的一系列组织病理学诊断进行训练,以区分 PMOL 和癌症,使用人口统计学、病变特征和细胞表型。开发了细胞学软件来协助病理学家审查刷取细胞学检测结果,包括高内涵细胞分析、数据可视化工具和结果报告。
通过自动化细胞学检测和机器学习方法准确确定了细胞表型(准确率为 99.3%)。在 3 种表型(1 型[成熟鳞状]、2 型[小圆]和 3 型[白细胞])中发现了诊断类别之间细胞表型分布的显著差异。临床算法具有可接受的性能特征(良性与轻度异型增生的曲线下面积为 0.81,良性与恶性的曲线下面积为 0.95)。
这些新的细胞学工具代表了快速 PMOL 评估的实用解决方案,有可能促进初级、二级和三级临床护理环境中的筛查和纵向监测。