| Literature DB >> 29468139 |
Yasser Khouj1, Jeremy Dawson1, James Coad2,3, Linda Vona-Davis3,4.
Abstract
Hyperspectral imaging (HSI) is a non-invasive optical imaging modality that shows the potential to aid pathologists in breast cancer diagnoses cases. In this study, breast cancer tissues from different patients were imaged by a hyperspectral system to detect spectral differences between normal and breast cancer tissues. Tissue samples mounted on slides were identified from 10 different patients. Samples from each patient included both normal and ductal carcinoma tissue, both stained with hematoxylin and eosin stain and unstained. Slides were imaged using a snapshot HSI system, and the spectral reflectance differences were evaluated. Analysis of the spectral reflectance values indicated that wavelengths near 550 nm showed the best differentiation between tissue types. This information was used to train image processing algorithms using supervised and unsupervised data. The K-means method was applied to the hyperspectral data cubes, and successfully detected spectral tissue differences with sensitivity of 85.45%, and specificity of 94.64% with true negative rate of 95.8%, and false positive rate of 4.2%. These results were verified by ground-truth marking of the tissue samples by a pathologist. In the hyperspectral image analysis, the image processing algorithm, K-means, shows the greatest potential for building a semi-automated system that could identify and sort between normal and ductal carcinoma in situ tissues.Entities:
Keywords: K-means; breast cancer; ductal carcinoma; hematoxylin and eosin; hyperspectral; spectral reflectance; unstained
Year: 2018 PMID: 29468139 PMCID: PMC5808285 DOI: 10.3389/fonc.2018.00017
Source DB: PubMed Journal: Front Oncol ISSN: 2234-943X Impact factor: 6.244
Figure 1Hyperspectral cube (top). Pixel spectrum in the spectral dimension (bottom).
Figure 2Regular image of the breast tissue, hyperspectral image, and the spectrum of the marked pixel.
Figure 3Building the spectral data cube in both line scan and snapshot systems.
Figure 4Images of stained and unstained samples. The marked [hyperspectral imaging (HSI)] are representing the chosen wavelength channel (550 nm) for detection.
Figure 5Hyperspectral imaging, training, and semi-auto detection workflow.
Figure 6Average response showing spectral reflectance of the cancer and normal tissues (A). The error bars quantify uncertainty in the graph based on an average of 10 measurements taken from each of the four marked region of interest for both normal and cancer tissue (B). A clear separation between both tissues was displayed at 550 nm. The table shows the results of applying K-means separately on each set of data from 9 to 10 subjects for training.
Figure 7The blue boxes indicates the areas marked by the pathologist, the shaded areas shows the detection of the K-means algorithm detecting cancer tissues (red), and normal tissues (blue) on the spectral channel 550 nm.