4.6 Article

Computer-Aided Detection of Quantitative Signatures for Breast Fibroepithelial Tumors Using Label-Free Multi-Photon Imaging

期刊

MOLECULES
卷 27, 期 10, 页码 -

出版社

MDPI
DOI: 10.3390/molecules27103340

关键词

breast fibroepithelial lesions; computer-aided diagnosis; deep learning; multi-photon microscopy; second harmonic generation

资金

  1. MEXT/JSPS [JP19K12218, JP20H05038]
  2. MEXT/JSPS KAKENHI [JP16H06280]
  3. AMED [JP20gm1210001]

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This study successfully differentiated fibroepithelial lesions using a combined technique of label-free imaging with multi-photon microscopy and artificial intelligence. Tissue sections were detected using multi-photon excited autofluorescence and second harmonic generation (SHG) signals, and a deep learning framework was used to automatically separate epithelial and stromal regions. This provides quantitative signatures for epithelial and stromal alterations in breast tissues.
Fibroadenomas (FAs) and phyllodes tumors (PTs) are major benign breast tumors, pathologically classified as fibroepithelial tumors. Although the clinical management of PTs differs from FAs, distinction by core needle biopsy diagnoses is still challenging. Here, a combined technique of label-free imaging with multi-photon microscopy and artificial intelligence was applied to detect quantitative signatures that differentiate fibroepithelial lesions. Multi-photon excited autofluorescence and second harmonic generation (SHG) signals were detected in tissue sections. A pixel-wise semantic segmentation method using a deep learning framework was used to separate epithelial and stromal regions automatically. The epithelial to stromal area ratio and the collagen SHG signal strength were investigated for their ability to distinguish fibroepithelial lesions. An image segmentation analysis with a pixel-wise semantic segmentation framework using a deep convolutional neural network showed the accurate separation of epithelial and stromal regions. A further investigation, to determine if scoring the epithelial to stromal area ratio and the SHG signal strength within the stromal area could be a marker for differentiating fibroepithelial tumors, showed accurate classification. Therefore, molecular and morphological changes, detected through the assistance of computational and label-free multi-photon imaging techniques, enable us to propose quantitative signatures for epithelial and stromal alterations in breast tissues.

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