Kothari Ragini, Fong Yuman, Storrie-Lombardi Michael C
Department of Surgery, City of Hope, 1500 E. Duarte Rd., Duarte, CA 91010, USA.
Kinohi Institute, Inc., Santa Barbara, CA 93109, USA.
Sensors (Basel). 2020 Nov 2;20(21):6260. doi: 10.3390/s20216260.
Laser Raman spectroscopy (LRS) is a highly specific biomolecular technique which has been shown to have the ability to distinguish malignant and normal breast tissue. This paper discusses significant advancements in the use of LRS in surgical breast cancer diagnosis, with an emphasis on statistical and machine learning strategies employed for precise, transparent and real-time analysis of Raman spectra. When combined with a variety of "machine learning" techniques LRS has been increasingly employed in oncogenic diagnostics. This paper proposes that the majority of these algorithms fail to provide the two most critical pieces of information required by the practicing surgeon: a probability that the classification of a tissue is correct, and, more importantly, the expected error in that probability. Stochastic backpropagation artificial neural networks inherently provide both pieces of information for each and every tissue site examined by LRS. If the networks are trained using both human experts and an unsupervised classification algorithm as gold standards, rapid progress can be made understanding what additional contextual data is needed to improve network classification performance. Our patients expect us to not simply have an opinion about their tumor, but to know how certain we are that we are correct. Stochastic networks can provide that information.
激光拉曼光谱(LRS)是一种高度特异的生物分子技术,已被证明有能力区分恶性和正常乳腺组织。本文讨论了LRS在乳腺癌手术诊断中的重大进展,重点是用于对拉曼光谱进行精确、透明和实时分析的统计和机器学习策略。当与各种“机器学习”技术相结合时,LRS已越来越多地用于肿瘤诊断。本文提出,这些算法中的大多数未能提供执业外科医生所需的两个最关键信息:组织分类正确的概率,更重要的是,该概率中的预期误差。随机反向传播人工神经网络本质上为LRS检查的每个组织部位提供这两个信息。如果使用人类专家和无监督分类算法作为金标准来训练网络,那么在了解需要哪些额外的上下文数据来提高网络分类性能方面可以取得快速进展。我们的患者期望我们不仅对他们的肿瘤有看法,而且要知道我们对自己的判断有多确定。随机网络可以提供该信息。