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Non-invasive optical estimate of tissue composition to differentiate malignant from benign breast lesions: A pilot study

机译:组织组合物的非侵袭性光学估计,从良性乳腺病变区分恶性:试验研究

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摘要

Several techniques are being investigated as a complement to screening mammography, to reduce its false-positive rate, but results are still insufficient to draw conclusions. This initial study explores time domain diffuse optical imaging as an adjunct method to classify non-invasively malignant vs benign breast lesions. We estimated differences in tissue composition (oxy- and deoxyhemoglobin, lipid, water, collagen) and absorption properties between lesion and average healthy tissue in the same breast applying a perturbative approach to optical images collected at 7 red-near infrared wavelengths (635–1060?nm) from subjects bearing breast lesions. The Discrete AdaBoost procedure, a machine-learning algorithm, was then exploited to classify lesions based on optically derived information (either tissue composition or absorption) and risk factors obtained from patient’s anamnesis (age, body mass index, familiarity, parity, use of oral contraceptives, and use of Tamoxifen). Collagen content, in particular, turned out to be the most important parameter for discrimination. Based on the initial results of this study the proposed method deserves further investigation.
机译:正在研究几种技术作为对筛选乳房X线照相术的补充,以降低其假阳性率,但结果仍然不足以得出结论。该初步研究探讨了时域扩散光学成像作为分类非侵入性恶性Vs良性乳腺病变的辅助方法。我们估计组织成分(氧 - 和脱氧杂环蛋白,脂,水,胶原蛋白)和损伤和平均健康组织之间的吸收性能,在相同的乳房中施加扰动方法在7个红色红外波长(635-1060来自受乳房病变的受试者的NM)。然后,分散的Adaboost程序是一种机器学习算法,被利用基于光学衍生的信息(组织成分或吸收)和从患者的anamnesis(年龄,体重指数,熟悉程度,奇偶校验,口服使用的危险因素来分类病变和危险因素避孕药和使用Tamoxifen)。特别是胶原蛋白含量成为最重要的歧视参数。根据本研究的初始结果,所提出的方法应该得到进一步的调查。

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