Classification of Soft Tissue Sarcoma Specimens with Raman Spectroscopy as Smart Sensing Technology

IF 10.5 Q1 ENGINEERING, BIOMEDICAL Cyborg and bionic systems (Washington, D.C.) Pub Date : 2021-12-06 DOI:10.34133/2021/9816913
Liming Li, Vamiq M. Mustahsan, Guangyu He, F. Tavernier, Gurtej Singh, B. Boyce, F. Khan, I. Kao
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引用次数: 4

Abstract

Intraoperative confirmation of negative resection margins is an essential component of soft tissue sarcoma surgery. Frozen section examination of samples from the resection bed after excision of sarcomas is the gold standard for intraoperative assessment of margin status. However, it takes time to complete histologic examination of these samples, and the technique does not provide real-time diagnosis in the operating room (OR), which delays completion of the operation. This paper presents a study and development of sensing technology using Raman spectroscopy that could be used for detection and classification of the tumor after resection with negative sarcoma margins in real time. We acquired Raman spectra from samples of sarcoma and surrounding benign muscle, fat, and dermis during surgery and developed (i) a quantitative method (QM) and (ii) a machine learning method (MLM) to assess the spectral patterns and determine if they could accurately identify these tissue types when compared to findings in adjacent H&E-stained frozen sections. High classification accuracy (>85%) was achieved with both methods, indicating that these four types of tissue can be identified using the analytical methodology. A hand-held Raman probe could be employed to further develop the methodology to obtain spectra in the OR to provide real-time in vivo capability for the assessment of sarcoma resection margin status.
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拉曼光谱智能传感技术在软组织肉瘤分类中的应用
术中确认切缘阴性是软组织肉瘤手术的重要组成部分。肉瘤切除后,对切除床上的样本进行冷冻切片检查是术中评估边缘状态的金标准。然而,完成这些样本的组织学检查需要时间,而且该技术不能在手术室(OR)中提供实时诊断,这会延迟手术的完成。本文介绍了一种利用拉曼光谱的传感技术的研究和发展,该技术可用于实时检测和分类切除后肉瘤阴性边缘的肿瘤。我们在手术期间从肉瘤和周围良性肌肉、脂肪和真皮的样本中获得了拉曼光谱,并开发了(i)定量方法(QM)和(ii)机器学习方法(MLM)来评估光谱模式,并确定与相邻H&E染色冷冻切片的结果相比,它们是否能够准确识别这些组织类型。这两种方法都达到了较高的分类准确率(>85%),表明使用分析方法可以识别这四种类型的组织。手持拉曼探针可用于进一步开发在OR中获得光谱的方法,为评估肉瘤切除边缘状态提供实时体内能力。
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来源期刊
CiteScore
7.70
自引率
0.00%
发文量
0
审稿时长
21 weeks
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