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乳腺癌热成像中的先进集成技术。

Advanced integrated technique in breast cancer thermography.

作者信息

Ng E Y K, Kee E C

机构信息

School of Mechanical and Aerospace Engineering, College of Engineering, Nanyang Technological University, 639798, Singapore.

出版信息

J Med Eng Technol. 2008 Mar-Apr;32(2):103-14. doi: 10.1080/03091900600562040.

Abstract

Thermography is a passive and non-contact imaging technique used extensively in the medical arena, but in relation to breast care, it has not been accepted as being on a par with mammography. This paper proposes the analysis of thermograms with the use of artificial neural networks (ANN) and bio-statistical methods, including regression and receiver operating characteristics (ROC). It is desired that through these approaches, highly accurate diagnosis using thermography techniques can be achieved. The suggested method is a multi-pronged approach comprising of linear regression, radial basis function network (RBFN) and ROC analysis. It is a novel, integrative and powerful technique that can be used to analyse large amounts of complicated measured data such as temperature values extracted from abnormal and healthy breast thermograms. The use of regression allows the correlation between the variables and the actual health status of the subject, which is decided by other traditional means such as the gold standard of mammography for breast cancer detection. This is important as it helps to select the appropriate variables to be used as inputs for building the neural network. RBFN is next trained to produce the desired outcome that is either positive or negative. When this is done, the RBFN possess the ability to predict the outcome when there are new input variables. The advantages of using RBFN include fast training of superior classification and decision-making abilities as compared to other networks such as backpropagation. Lastly, ROC is applied to evaluate the sensitivity, specificity and accuracy of the outcome for the RBFN test files. The proposed technique has an accuracy rate of 80.95%, with 100% sensitivity and 70.6% specificity in identifying breast cancer. The results are promising as compared to clinical examination by experienced radiologists, which has an accuracy rate of approximately 60-70%. To sum up, technological advances in the field of infrared thermography over the last 20 years warrant a re-evaluation of the use of high-resolution digital thermographic camera systems in the diagnosis and management of breast cancer. Thermography seeks to identify the presence of a tumour by the elevated temperature associated with increase blood flow and cellular activity. Of particular interest would be investigation in younger women and men, for whom mammography is either unsuitable or of limited effectiveness. The paper evaluated the high-definition digital infrared thermographic technology and knowledge base; and supports the development of future diagnostic and therapeutic services in breast cancer imaging. Through the use of integrative ANN and bio-statistical methods, advances are made in thermography application with regard to achieving a higher level of consistency. For breast cancer care, it has become possible to use thermography as a powerful adjunct and biomarker tool, together with mammography for diagnosis purposes.

摘要

热成像技术是一种被动式非接触成像技术,在医学领域有着广泛应用,但在乳腺护理方面,它尚未被认为与乳房X光检查具有同等地位。本文提出运用人工神经网络(ANN)和生物统计方法(包括回归分析和受试者工作特征曲线(ROC))来分析热成像图。期望通过这些方法,利用热成像技术实现高度准确的诊断。所建议的方法是一种多管齐下的方法,包括线性回归、径向基函数网络(RBFN)和ROC分析。它是一种新颖、综合且强大的技术,可用于分析大量复杂的测量数据,例如从异常和健康乳房热成像图中提取的温度值。回归分析的使用能够确定变量与受试者实际健康状况之间的相关性,而受试者的实际健康状况由其他传统方法(如用于乳腺癌检测的乳房X光检查金标准)来判定。这一点很重要,因为它有助于选择合适的变量作为构建神经网络的输入。接下来训练RBFN以产生阳性或阴性的预期结果。完成此操作后,当有新的输入变量时,RBFN就具备预测结果的能力。与其他网络(如反向传播网络)相比,使用RBFN的优势包括训练速度快、具有卓越的分类和决策能力。最后,应用ROC来评估RBFN测试文件结果的敏感性、特异性和准确性。所提出的技术在识别乳腺癌方面的准确率为80.95%,敏感性为100%,特异性为70.6%。与经验丰富的放射科医生进行的临床检查相比,这些结果很有前景,临床检查的准确率约为60 - 70%。总之,过去20年里红外热成像领域的技术进步使得有必要重新评估高分辨率数字热成像相机系统在乳腺癌诊断和管理中的应用。热成像试图通过与血流量增加和细胞活动相关的体温升高来识别肿瘤的存在。对于乳房X光检查不适用或效果有限的年轻女性和男性进行研究将特别有意义。本文评估了高清数字红外热成像技术和知识库;并支持乳腺癌成像领域未来诊断和治疗服务的发展。通过综合运用人工神经网络和生物统计方法,热成像应用在实现更高水平的一致性方面取得了进展。对于乳腺癌护理而言,将热成像与乳房X光检查一起用作强大的辅助和生物标志物工具用于诊断目的已成为可能。

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