使用多波长光声成像检测甲状腺癌的计算机辅助组织表征。

R. Tholkappian, S. Sinha, B. Chinni, N. Rao, V. Dogra
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引用次数: 0

摘要

光声成像(PAI)是一种新兴的软组织成像系统,可以潜在地用于甲状腺癌的检测。计算机辅助诊断工具通过协助放射科医生阐明医疗数据,进一步提高了检测过程。本研究旨在使用不同的机器学习算法对实际甲状腺癌患者切除甲状腺标本所获得的多波长PA数据进行分类。对随机森林、支持向量机、人工神经网络三种机器学习算法在甲状腺良性与恶性、非恶性与恶性分类中的性能进行了详尽的比较分析。随机森林算法对良性甲状腺和恶性甲状腺的分类效率最高,准确率高于其他两种算法,而支持向量机在非恶性甲状腺分类方面的特异性、接受者操作特征下的面积和准确率均高于其他两种算法。本研究表明,多波长PA数据可以与合适的机器算法一起用于有效的甲状腺癌检测。
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Computer-aided tissue characterization for detection of thyroid cancer using multi-wavelength photoacoustic imaging.
Photoacoustic Imaging(PAI) is an emerging soft tissue imaging system that can be potentially used for the detection of thyroid cancer. Computer-Aided diagnosis tools help further enhance the detection process by assisting the radiologist in the elucidation of medical data. This study aimed to classify the malignant and non-malignant thyroid tissue using different machine learning algorithms applied to the multi-wavelength PA data obtained, generated by the excised thyroid specimens from actual thyroid cancer patients. An exhaustive comparative analysis among the performances of three machine learning algorithms, random forest, support vector machine, and artificial neural network was performed for classifying benign vs malignant thyroid as well as non-malignant vs malignant thyroid. While the random forest algorithm efficiently classified benign vs malignant thyroid with the highest accuracy than the other two algorithms, the support vector machine outperformed the other two algorithms in classifying non-malignant vs malignant with the highest specificity, the area under the receiver operating characteristics, and accuracy. This study shows that multiwavelength PA data can be used with suitable machine algorithms for efficient thyroid cancer detection.
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