Ashutosh P Raman, Tanner J Zachem, Sarah Plumlee, Christine Park, William Eward, Patrick J Codd, Weston Ross
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The following study builds on this work, implementing classification algorithms, including Artificial Neural Network, Support Vector Machine, Logistic Regression, and K-Nearest Neighbors, to diagnose freshly resected murine tissue as sarcoma or healthy. Classification accuracies of over 93% are achieved with Logistic Regression, and Area Under the Curve scores over 94% are achieved with Support Vector Machines, delineating a clear way to automate photonic diagnosis of ambiguous tissue in assistance of surgeons. These interpretable algorithms can also be linked to important physiological diagnostic indicators, unlike the black-box ANN architecture. 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引用次数: 0
摘要
对软组织肉瘤组织进行人工手术切除可能会面临许多挑战,包括必须精确确定肿瘤与正常组织的边界、现有手术器械的局限性以及感染或组织愈合困难的标准风险。生物医学传感领域已经开展了大量研究,以开发非接触式传感设备。我们的研究小组之前设计了一个这样的护理点平台,利用基于自发荧光的光谱特征来突出肿瘤组织和健康组织的重要生理差异。下面的研究以这项工作为基础,采用人工神经网络、支持向量机、逻辑回归和 K-近邻等分类算法,将新鲜切除的鼠组织诊断为肉瘤或健康组织。逻辑回归的分类准确率超过了 93%,支持向量机的曲线下面积得分超过了 94%,这为帮助外科医生对模棱两可的组织进行自动光子诊断提供了明确的方法。与黑箱 ANN 架构不同的是,这些可解释的算法还可以与重要的生理诊断指标联系起来。这是第一项利用机器学习解释肉瘤组织非接触式自动荧光传感设备数据的已知研究,可直接应用于术中快速传感。
Machine learning approaches in non-contact autofluorescence spectrum classification.
Manual surgical resection of soft tissue sarcoma tissue can involve many challenges, including the critical need for precise determination of tumor boundary with normal tissue and limitations of current surgical instrumentation, in addition to standard risks of infection or tissue healing difficulty. Substantial research has been conducted in the biomedical sensing landscape for development of non-human contact sensing devices. One such point-of-care platform, previously devised by our group, utilizes autofluorescence-based spectroscopic signatures to highlight important physiological differences in tumorous and healthy tissue. The following study builds on this work, implementing classification algorithms, including Artificial Neural Network, Support Vector Machine, Logistic Regression, and K-Nearest Neighbors, to diagnose freshly resected murine tissue as sarcoma or healthy. Classification accuracies of over 93% are achieved with Logistic Regression, and Area Under the Curve scores over 94% are achieved with Support Vector Machines, delineating a clear way to automate photonic diagnosis of ambiguous tissue in assistance of surgeons. These interpretable algorithms can also be linked to important physiological diagnostic indicators, unlike the black-box ANN architecture. This is the first known study to use machine learning to interpret data from a non-contact autofluorescence sensing device on sarcoma tissue, and has direct applications in rapid intraoperative sensing.