Title Raman spectral band imaging for the diagnostics and classification of canine and feline cutaneous tumors
Authors Tamošiūnas, Mindaugas ; Maciulevičius, Martynas ; Maļiks, Romans ; Dupļevska, Diāna ; Viškere, Daira ; Matīse-van Houtana, Ilze ; Kadiķis, Roberts ; Cugmas, Blaž ; Raišutis, Renaldas
DOI 10.1080/01652176.2025.2486771
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Is Part of Veterinary quarterly.. Abingdon : Taylor & Francis. 2025, vol. 45, iss. 1, p. 1-17.. ISSN 0165-2176. eISSN 1875-5941
Keywords [eng] Raman spectral band imaging ; mast cell tumor ; near-infrared autofluorescence ; soft tissue sarcoma ; veterinary oncology
Abstract [eng] This study introduces Raman imaging technique for diagnosing skin cancer in veterinary oncology patients (dogs and cats). Initially, Raman spectral bands (with specificity to certain molecular structures and functional groups) were identified in formalin-fixed samples of mast cell tumors and soft tissue sarcomas, obtained through routine veterinary biopsy submissions. Then, a custom-built Raman macro-imaging system featuring an intensified CCD camera (iXon Ultra 888, Andor, UK), tunable narrow-band Semrock (USA) optical filter compartment was used to map the spectral features at 1437 cm-1 and 1655 cm-1 in ex vivo tissue. This approach enabled wide-field (cm2), rapid (within seconds), and safe (< 400 mW/cm2) imaging conditions, supporting accurate diagnosis of tissue state. The findings indicate that machine learning classifiers - particularly support vector machine (SVM) and decision tree (DT) - effectively distinguished between soft tissue sarcoma, mastocytoma and benign tissues using Raman spectral band imaging data. Additionally, combining Raman macro-imaging with residual near-infrared (NIR) autofluorescence as a bimodal imaging technique enhanced diagnostic performance, reaching 85 - 95% in accuracy, sensitivity, specificity, and precision - even with a single spectral band (1437 cm-1 or 1655 cm-1). In conclusion, the proposed bi-modal imaging is a pioneering method for veterinary oncology science, offering to improve the diagnostic accuracy of malignant tumors.
Published Abingdon : Taylor & Francis
Type Journal article
Language English
Publication date 2025
CC license CC license description