Preoperative AI-Driven Fluorescence Diagnosis of Non-Melanoma Skin Cancer

Diagnostics (Basel). 2021 Dec 29;12(1):72. doi: 10.3390/diagnostics12010072.

Abstract

The diagnosis and treatment of non-melanoma skin cancer remain urgent problems. Histological examination of biopsy material-the gold standard of diagnosis-is an invasive procedure that requires a certain amount of time to perform. The ability to detect abnormal cells using fluorescence spectroscopy (FS) has been shown in many studies. This technique is rapidly expanding due to its safety, relative cost-effectiveness, and efficiency. However, skin lesion FS-based diagnosis is challenging due to a number of single overlapping spectra emitted by fluorescent molecules, making it difficult to distinguish changes in the overall spectrum and the molecular basis for it. We applied deep learning (DL) algorithms to quantitatively assess the ability of FS to differentiate between pathologies and normal skin. A total of 137 patients with various forms of primary and recurrent basal cell carcinoma (BCC) were observed by a multispectral laser-based device with a built-in neural network (NN) "DSL-1". We measured the fluorescence spectra of suspected non-melanoma skin cancers and compared them with "normal" skin spectra. These spectra were input into DL algorithms to determine whether the skin is normal, pigmented normal, benign, or BCC. The preoperative differential AI-driven fluorescence diagnosis method correctly predicted the BCC lesions. We obtained an average sensitivity of 62% and average specificity of 83% in our experiments. Thus, the presented "DSL-1" diagnostic device can be a viable tool for the real-time diagnosis and guidance of non-melanoma skin cancer resection.

Keywords: artificial intelligence; basal cell carcinoma; deep learning; dense neural network; fluorescence diagnostics; neural network; non-melanoma skin cancer.