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Automatic recognition of breast invasive ductal carcinoma based on terahertz spectroscopy with wavelet packet transform and machine learning

Wenquan Liu, Rui Zhang, Ling Yu, Hongping Tang, Rongbin She, Guanglu Wei, Xiaojing Gong, Yuanfu Lu

2020Biomedical Optics Express46 citationsDOIOpen Access PDF

Abstract

We demonstrate an automatic recognition strategy for terahertz (THz) pulsed signals of breast invasive ductal carcinoma (IDC) based on a wavelet entropy feature extraction and a machine learning classifier. The wavelet packet transform was implemented into the complexity analysis of the transmission THz signal from a breast tissue sample. A novel index of energy to Shannon entropy ratio (ESER) was proposed to distinguish different tissues. Furthermore, the principal component analysis (PCA) method and machine learning classifier were further adopted and optimized for automatic classification of the THz signal from breast IDC sample. The areas under the receiver operating characteristic curves are all larger than 0.89 for the three adopted classifiers. The best breast IDC recognition performance is with the precision, sensitivity and specificity of 92.85%, 89.66% and 96.67%, respectively. The results demonstrate the effectiveness of the ESER index together with the machine learning classifier for automatically identifying different breast tissues.

Topics & Concepts

Artificial intelligencePattern recognition (psychology)Computer scienceWavelet packet decompositionPrincipal component analysisWavelet transformDuctal carcinomaFeature extractionWaveletClassifier (UML)Terahertz radiationBreast cancerMachine learningSpeech recognitionPhysicsMedicineOpticsCancerInternal medicineTerahertz technology and applicationsOptical and Acousto-Optic TechnologiesAdvanced Chemical Sensor Technologies