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: Skin cancer diagnosis faces critical challenges due to the visual similarity of lesions and dataset limitations. : This study introduces HybridSkinFormer, a robust deep learning model designed to classify skin lesions from both clinical and dermatoscopic images. The model employs a two-stage architecture: a multi-layer ConvNet for local feature extraction and a residual-learnable multi-head attention module for global context fusion. A novel activation function (StarPRelu) and Enhanced Focal Loss (EFLoss) address neuron death and class imbalance, respectively. : Evaluated on a hybrid dataset (37,483 images across nine classes), HybridSkinFormer achieved state-of-the-art performance with an overall accuracy of 94.2%, a macro precision of 91.1%, and a macro recall of 91.0%, outperforming nine CNN and ViT baselines. : Its ability to handle multi-modality data and mitigate imbalance highlights its clinical utility for early cancer detection in resource-constrained settings.
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http://dx.doi.org/10.3390/diagnostics15162011 | DOI Listing |
Cureus
August 2025
Dermatology, Hospital Carlos Roberto Huembes, Managua, NIC.
Recalcitrant palmar common warts pose a considerable challenge in dermatology due to their frequent persistence despite various treatment attempts. The thick stratum corneum of the palms and the constant pressure and friction in this location contribute to their resistance to therapy and a high rate of recurrence. We report the case of a 33-year-old male with a 26-month history of a progressively enlarging palmar wart refractory to extensive conventional therapies, including 18 intermittent sessions of liquid nitrogen cryotherapy administered over the course of his 26-month history, two electrofulguration sessions, and various topical agents.
View Article and Find Full Text PDFDiagnostics (Basel)
August 2025
Department of Dermatovenereology, West China Hospital, Sichuan University, Chengdu 610041, China.
: Skin cancer diagnosis faces critical challenges due to the visual similarity of lesions and dataset limitations. : This study introduces HybridSkinFormer, a robust deep learning model designed to classify skin lesions from both clinical and dermatoscopic images. The model employs a two-stage architecture: a multi-layer ConvNet for local feature extraction and a residual-learnable multi-head attention module for global context fusion.
View Article and Find Full Text PDFJ Clin Aesthet Dermatol
August 2025
Dr. Nazir, Ms. Daly, and Dr. Buchanan are with the Department of Dermatology at the Medical College of Georgia at Augusta University in Augusta, Georgia.
Ultraviolet-induced fluorescence dermoscopy (UVFD) is a novel diagnostic and visualization technique that enhances visualization of skin dermatoses with ultraviolet (UV) light. UVFD has been used to diagnose dermatoses including bacterial and fungal infections, pigmentary disorders, and skin neoplasms. We present five cases-pitted keratolysis, porokeratosis, molluscum, biopsy site identification, and lentigo maligna-where UVFD alone, compared to traditional polarized dermoscopy (PD) or the unaided clinical exam, served as a "game-changer" in diagnosis and management.
View Article and Find Full Text PDFJMIR Dermatol
August 2025
Clinique Dermatologie Gent, Clinique Dermatologie Gent, Hippoliet lippensplein 24A, Gent, BE.
Background: Skin cancer is a global health concern due to its high and still increasing incidence and associated healthcare cost. Belgium is no exception as one in five people are diagnosed with skin cancer before the age of 75. A promising innovation, the VECTRA WB360, a three-dimensional total body photography system allows clinicians to objectively compare the totality of the skin on a macroscopic level on further appointments.
View Article and Find Full Text PDFDermatol Pract Concept
July 2025
Department of Family and Emergency Medicine of Postgraduate Education, Ivano-Frankivsk National Medical University, Ivano-Frankivsk, Ukraine.
Introduction: Speculatively, digital image post-processing (DIPP) enhances diagnostic accuracy in dermoscopy.
Objective: We aimed to investigate the advantages and limitations of DIPP, as well as its perceived reliability and safety.
Methods: In this study we investigated the perception and use of DIPP among members of the International Dermoscopy Society through a web-based survey with 17 questions focusing on: (i) demographics (sex, age, nationality, specialty, professional experience in dermoscopy), (ii) application of digital dermoscopy, (iii) imaging devices, (iv) DIPP software usage, (v) area of DIPP application (e.