2020
DOI: 10.3390/jcm9061662
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Non-Invasive Skin Cancer Diagnosis Using Hyperspectral Imaging for In-Situ Clinical Support

Abstract: Skin cancer is one of the most common forms of cancer worldwide and its early detection its key to achieve an effective treatment of the lesion. Commonly, skin cancer diagnosis is based on dermatologist expertise and pathological assessment of biopsies. Although there are diagnosis aid systems based on morphological processing algorithms using conventional imaging, currently, these systems have reached their limit and are not able to outperform dermatologists. In this sense, hyperspectral (HS) imaging (HSI) ar… Show more

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Cited by 82 publications
(97 citation statements)
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“…In Table 5 results from other researchers are provided. From Table 5, we can discern that most research studies have been discrimination of the aggressive melanoma PSLs, where Nagaoka et al [11] and Leon et al [8] had the highest sensitivity and specificity. Stamnes et al [17] also had high such measures; however, these were only discriminating between benign and malignant PSLs.…”
Section: Validation and Test Experimentsmentioning
confidence: 97%
See 2 more Smart Citations
“…In Table 5 results from other researchers are provided. From Table 5, we can discern that most research studies have been discrimination of the aggressive melanoma PSLs, where Nagaoka et al [11] and Leon et al [8] had the highest sensitivity and specificity. Stamnes et al [17] also had high such measures; however, these were only discriminating between benign and malignant PSLs.…”
Section: Validation and Test Experimentsmentioning
confidence: 97%
“…The system used to acquire the HS dermatologic images is described in [20], using the same database as in Leon et al [8]. The database consists of 76 images of PSLs from 61 patients: 36 cancerous and 40 noncancerous.…”
Section: Hyperspectral In Vivo Dermatologic Datamentioning
confidence: 99%
See 1 more Smart Citation
“…In the context of surgical guidance, Akbari et al processed HS images from the abdomen to detect intestinal ischemia [36]. For cancer detection, SVM and HSI have been used for the identification of gastric cancer [37], prostate cancer [38], tongue cancer [39], and skin cancer [40]. Although RF and MLR have been widely used for HS information extraction, their usage in medical HSI is limited.…”
Section: Example Of Classification and Heat Maps Obtained Through MLmentioning
confidence: 99%
“…Pixel-wise classification SVM Intestinal ischemia identification [36] Gastric cancer detection [37] Prostate cancer [38] Tongue cancer [39] Skin cancer [40] RF In-vivo oral cancer [41] MLR Ulcerative colitis in histological slides [42] SVM, RF Brain cancer in histological slides [43] SVM, RF, LDA Head and neck tumor [44] Feature extraction and feature selection PCA Biliary trees visualization enhancement [52] PCA and false color Melanocytic lesions visualization [53] PCA and supervised classification Detection of in-vivo oral cancer [54] Prostate cancer in histological slides [55] The identification of white blood cells in blood smear slides [56] Intraoperative brain tumor delineation [57] Orthogonal projections Retina analysis for Alzheimer's detection [58] t-SNE and supervised classification…”
Section: Optical Inverse Modeling Light Transport Models and Monte Camentioning
confidence: 99%