Classification of tumor signatures from electrosurgical vapors using mass spectrometry and machine learning: a feasibility study

Laura Connolly, A. Jamzad, M. Kaufmann, Rachel Rubino, A. Sedghi, T. Ungi, Mark Asselin, S. Yam, J. Rudan, C. Nicol, G. Fichtinger, P. Mousavi
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Abstract

PURPOSE: The iKnife is a new surgical tool designed to aid in tumor resection procedures by providing enriched chemical feedback about the tumor resection cavity from electrosurgical vapors. We build and compare machine learning classifiers that are capable of distinguishing primary cancer from surrounding tissue at different stages of tumor progression. In developing our classification framework, we implement feature reduction and recognition tools that will assist in the translation of xenograft studies to clinical application and compare these tools to standard linear methods that have been previously demonstrated. METHODS: Two cohorts (n=6 each) of 12 week old female immunocompromised (Rag2−/−;Il2rg−/−) mice were injected with the same human breast adenocarcinoma (MDA-MB-231) cell line. At 4 and 6 weeks after cell injection, mice in each cohort were respectively euthanized, followed by iKnife burns performed on tumors and tissues prior to sample collection for future studies. A feature reduction technique that uses a neural network is compared to traditional linear analysis. For each method, we fit a classifier to distinguish primary cancer from surrounding tissue. RESULTS: Both classifiers can distinguish primary cancer from metastasis and surrounding tissue. The classifier that uses a neural network achieves an accuracy of 96.8% and the classifier without the neural network achieves an accuracy of 96%. CONCLUSIONS: The performance of these classifiers indicate that this device has the potential to offer real-time, intraoperative classification of tissue. This technology may be used to assist in intraoperative margin detection and inform surgical decisions to offer a better standard of care for cancer patients.
使用质谱法和机器学习从电手术蒸气中分类肿瘤特征:可行性研究
目的:iKnife是一种新的手术工具,旨在通过从电手术蒸汽中提供关于肿瘤切除腔的丰富化学反馈来帮助肿瘤切除手术。我们建立并比较了机器学习分类器,这些分类器能够在肿瘤进展的不同阶段区分原发性癌症和周围组织。在开发我们的分类框架时,我们实现了特征还原和识别工具,这些工具将有助于将异种移植研究转化为临床应用,并将这些工具与先前证明的标准线性方法进行比较。方法:两组12周龄雌性免疫功能低下(Rag2−/−;Il2rg−/−)小鼠(每组n=6)注射相同的人乳腺腺癌(MDA-MB-231)细胞系。在细胞注射后4周和6周,每组小鼠分别安乐死,随后对肿瘤和组织进行iKnife烧伤,然后收集样本用于未来的研究。利用神经网络的特征约简技术与传统的线性分析进行了比较。对于每种方法,我们都拟合一个分类器来区分原发性癌症和周围组织。结果:两种分类器均能区分原发癌、转移癌和周围组织癌。使用神经网络的分类器准确率为96.8%,不使用神经网络的分类器准确率为96%。结论:这些分类器的性能表明该设备具有提供实时术中组织分类的潜力。该技术可用于辅助术中切缘检测,并为手术决策提供信息,从而为癌症患者提供更好的护理标准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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