Lauritz F. Brorsen, James S. McKenzie, Fernanda E. Pinto, Martin Glud, Harald S. Hansen, Merete Haedersdal, Zoltan Takats, Christian Janfelt, Catharina M. Lerche
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引用次数: 0
摘要
基底细胞癌(BCC)是最常见的角质细胞癌,由于发病率高,给公共卫生带来了巨大挑战。传统的诊断方法依赖于肉眼检查和组织病理学分析,不包括代谢组学数据。这项探索性研究旨在通过应用基质辅助激光解吸电离质谱成像(MALDI-MSI)和机器学习(ML),对BCC进行分子特征描述并诊断肿瘤组织。在小鼠模型中诱导 BCC 肿瘤发生,并对含有 BCC 的组织切片(n = 12)进行分析。研究设计包括三个阶段:(i) 模型训练;(ii) 模型验证;(iii) 代谢组学分析。根据组织病理学提取并标记的 MS 数据对 ML 算法进行了训练。标记数据的总体分类准确率达到 99.0%。未标记组织区域的分类与认证莫氏外科医生的评估结果一致,占总组织区域的 99.9%,这表明该模型在识别 BCC 方面具有很高的灵敏度和特异性。对识别 BCC 的 189 个重要信号进行了暂定代谢物鉴定,每个信号都是具有诊断价值的潜在肿瘤标记物。这些研究结果表明,MALDI-MSI 与 ML 联用可描述 BCC 代谢组学特征,并以高灵敏度和特异性诊断肿瘤组织。还需要进一步研究,探索在临床环境中实施集成 MS 和自动分析的潜力。
Metabolomic profiling and accurate diagnosis of basal cell carcinoma by MALDI imaging and machine learning
Basal cell carcinoma (BCC), the most common keratinocyte cancer, presents a substantial public health challenge due to its high prevalence. Traditional diagnostic methods, which rely on visual examination and histopathological analysis, do not include metabolomic data. This exploratory study aims to molecularly characterize BCC and diagnose tumour tissue by applying matrix-assisted laser desorption ionization mass spectrometry imaging (MALDI-MSI) and machine learning (ML). BCC tumour development was induced in a mouse model and tissue sections containing BCC (n = 12) were analysed. The study design involved three phases: (i) Model training, (ii) Model validation and (iii) Metabolomic analysis. The ML algorithm was trained on MS data extracted and labelled in accordance with histopathology. An overall classification accuracy of 99.0% was reached for the labelled data. Classification of unlabelled tissue areas aligned with the evaluation of a certified Mohs surgeon for 99.9% of the total tissue area, underscoring the model's high sensitivity and specificity in identifying BCC. Tentative metabolite identifications were assigned to 189 signals of importance for the recognition of BCC, each indicating a potential tumour marker of diagnostic value. These findings demonstrate the potential for MALDI-MSI coupled with ML to characterize the metabolomic profile of BCC and to diagnose tumour tissue with high sensitivity and specificity. Further studies are needed to explore the potential of implementing integrated MS and automated analyses in the clinical setting.
期刊介绍:
Experimental Dermatology provides a vehicle for the rapid publication of innovative and definitive reports, letters to the editor and review articles covering all aspects of experimental dermatology. Preference is given to papers of immediate importance to other investigators, either by virtue of their new methodology, experimental data or new ideas. The essential criteria for publication are clarity, experimental soundness and novelty. Letters to the editor related to published reports may also be accepted, provided that they are short and scientifically relevant to the reports mentioned, in order to provide a continuing forum for discussion. Review articles represent a state-of-the-art overview and are invited by the editors.