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Improved Resection Margins in Surgical Oncology Using Intraoperative Mass Spectrometry

机译:使用术中质谱改善手术肿瘤中的切除余量

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PURPOSE: Incomplete tumor resections leads to the presence of cancer cells on the resection margins demanding subsequent revision surgery and poor outcomes for patients. Intraoperative evaluations of the tissue pathology, including the surgical margins, can help decrease the burden of repeat surgeries on the patients and healthcare systems. In this study, we propose adapting multi instance learning (MIL) for prospective and intraoperative basal cell carcinoma (BCC) detection in surgical margins using mass spectrometry. METHODS: Resected specimens were collected and inspected by a pathologist and burnt with iKnife. Retrospective training data was collected with a standard cautery tip and included 63 BCC and 127 normal burns. Prospective data was collected for testing with both the standard and a fine tip cautery. This included 130 (66 BCC and 64 normal) and 99 (32 BCC and 67 normal) burns, respectively. An attention-based MIL model was adapted and applied to this dataset. RESULTS: Our models were able to predict BCC at surgical margins with AUC as high as 91%. The models were robust to changes in cautery tip but their performance decreased slightly. The models were also tested intraoperatively and achieved an accuracy of 94%. CONCLUSION: This is the first study that applies the concept of MIL for tissue characterization in perioperative and intraoperative REIMS data.
机译:目的:不完全肿瘤切除术导致癌细胞对切除患者的存在,要求随后的修正手术和患者的差。组织病理学(包括手术边距)的术中评价有助于降低患者和医疗保健系统对重复手术的负担。在这项研究中,我们提出使用质谱法在手术边缘中的前瞻性和术中基底细胞癌(BCC)检测来适应多实例学习(MIL)。方法:收集切除的样品并由病理学家检查并用INKIFS烧伤。回顾性培训数据采用标准烧灼尖端收集,包括63bcc和127正常烧伤。收集预期数据,用于使用标准和精细尖端烧灼进行测试。这包括130(66bcc和64正常)和99(32bcc和67正常)烧伤。基于关注的MIL模型进行了调整并应用于此数据集。结果:我们的型号能够在AUC的手术边缘预测BCC,高达91%。该模型对烧灼尖端的变化具有强大,但它们的性能略有下降。该模型还在术中进行测试,并达到94%的精度。结论:这是第一项研究,该研究适用于围手术期和术中恢复数据中的组织表征的MIL概念。

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