Mass Spectrometry Laboratory, Environmental Health Sciences Department, Istituto di Ricerche Farmacologiche Mario Negri IRCCS, Milan, Italy.
Department of Anatomy and Cell Biology, University of Yamanashi Faculty of Medicine, Chuo, Japan.
Liver Int. 2020 Dec;40(12):3117-3124. doi: 10.1111/liv.14604. Epub 2020 Aug 4.
Complete surgical resection with negative margin is one of the pillars in treatment of liver tumours. However, current techniques for intra-operative assessment of tumour resection margins are time-consuming and empirical. Mass spectrometry (MS) combined with artificial intelligence (AI) is useful for classifying tissues and provides valuable prognostic information. The aim of this study was to develop a MS-based system for rapid and objective liver cancer identification and classification.
A large dataset derived from 222 patients with hepatocellular carcinoma (HCC, 117 tumours and 105 non-tumours) and 96 patients with mass-forming cholangiocarcinoma (MFCCC, 50 tumours and 46 non-tumours) were analysed by Probe Electrospray Ionization (PESI) MS. AI by means of support vector machine (SVM) and random forest (RF) algorithms was employed. For each classifier, sensitivity, specificity and accuracy were calculated.
The overall diagnostic accuracy exceeded 94% in both the AI algorithms. For identification of HCC vs non-tumour tissue, RF was the best, with 98.2% accuracy, 97.4% sensitivity and 99% specificity. For MFCCC vs non-tumour tissue, both algorithms gave 99.0% accuracy, 98% sensitivity and 100% specificity.
The herein reported MS-based system, combined with AI, permits liver cancer identification with high accuracy. Its bench-top size, minimal sample preparation and short working time are the main advantages. From diagnostics to therapeutics, it has the potential to influence the decision-making process in real-time with the ultimate aim of improving cancer patient cure.
完全切除且切缘阴性是肝脏肿瘤治疗的基石之一。然而,目前术中评估肿瘤切除边界的技术既耗时又凭经验。质谱(MS)结合人工智能(AI)可用于组织分类,并提供有价值的预后信息。本研究旨在开发一种基于 MS 的系统,用于快速、客观地识别和分类肝癌。
对 222 例肝细胞癌(HCC,117 个肿瘤和 105 个非肿瘤)和 96 例肿块型胆管细胞癌(MFCCC,50 个肿瘤和 46 个非肿瘤)患者的大量数据集进行 Probe Electrospray Ionization(PESI)MS 分析。采用支持向量机(SVM)和随机森林(RF)算法进行 AI 分析。对于每个分类器,计算敏感性、特异性和准确性。
两种 AI 算法的总体诊断准确率均超过 94%。对于 HCC 与非肿瘤组织的识别,RF 算法的准确率最高,为 98.2%,敏感性为 97.4%,特异性为 99%。对于 MFCCC 与非肿瘤组织的识别,两种算法的准确率均为 99.0%,敏感性为 98%,特异性为 100%。
本研究报告的基于 MS 的系统结合 AI 可实现肝癌的高准确性识别。其台式尺寸、最小的样本制备和短的工作时间是主要优势。从诊断到治疗,它有可能实时影响决策过程,最终目标是提高癌症患者的治愈率。