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Diagnosing atypical pigmented facial lesions (aPFLs) is a challenging topic for dermatologists. Accurate diagnosis of these lesions is crucial for effective patient management, especially in dermatology, where visual assessment plays a central role. Incorrect diagnoses can result in mismanagement, delays in appropriate interventions, and potential harm. AI, however, holds the potential to enhance diagnostic accuracy and provide reliable support to clinicians. This work aimed to evaluate and compare the effectiveness of machine learning (logistic regression of lesion features and patient metadata) and deep learning (CNN analysis of images) models in dermoscopy diagnosis and the management of aPFLs. This study involved the analysis of 1197 dermoscopic images of facial lesions excised due to suspicious and histologically confirmed malignancy, classified into seven classes (lentigo maligna-LM; lentigo maligna melanoma-LMM; atypical nevi-AN; pigmented actinic keratosis-PAK; solar lentigo-SL; seborrheic keratosis-SK; and seborrheic lichenoid keratosis-SLK). Image samples were collected through the Integrated Dermoscopy Score (iDScore) project. The statistical analysis of the dataset shows that the patients mean age was 65.5 ± 14.2, and the gender was equally distributed (580 males-48.5%; 617 females-51.5%). A total of 41.7% of the sample constituted malignant lesions (LM and LMM). Meanwhile, the benign lesions were mainly PAK (19.3%), followed by SL (22.2%), AN (10.4%), SK (4.0%), and SLK (2.3%). The lesions were mainly localised in the cheek and nose areas. A stratified analysis of the assessment provided by the enrolled dermatologists was also performed, resulting in 2445 evaluations of the 1197 images (2.1 evaluations per image on average). The physicians demonstrated higher accuracy in differentiating between malignant and benign lesions (71.2%) than in distinguishing between the seven specific diagnoses across all the images (42.9%). The logistic regression model obtained a precision of 39.1%, a sensitivity of 100%, a specificity of 33.9%, and an accuracy of 53.6% on the test set, while the CNN model showed lower sensitivity (58.2%) and higher precision (47.0%), specificity (90.8%), and accuracy (59.5%) for melanoma diagnosis. This research demonstrates how AI can enhance the diagnostic accuracy in complex dermatological cases like aPFLs by integrating AI models with clinical data and evaluating different diagnostic approaches, paving the way for more precise and scalable AI applications in dermatology, showing their critical role in improving patient management and the outcomes in dermatology.
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http://dx.doi.org/10.3390/bioengineering11101036 | DOI Listing |
Ocul Immunol Inflamm
September 2025
National Eye Institute, National Institutes of Health, Bethesda, Maryland, USA.
Purpose: To report pyramidal-like, hyperreflective changes of the outer retina and retinal pigmented epithelium (RPE) in three patients with an atypical non-syphilitic outer retinopathy.
Study Design/materials And Methods: Single institutional case series conducted at the National Eye Institute, National Institutes of Health.
Results: Hyperreflective, pyramidal lesions of the outer retina and RPE have been described in patients with syphilitic posterior segment uveitis.
Mol Genet Genomics
September 2025
Institute of Genetics, Vetsuisse Faculty, University of Bern, 3012, Bern, Switzerland.
The aim of this study was to investigate three unrelated Simmental calves with atypical white coat color, identify potential genetic causes using a trio-based whole-genome sequencing approach, and assess the prevalence of the identified variants in the breed. Several inherited alleles affecting coat color, ranging from fawn to red spotted and white-headed, have been described in Simmental cattle originating from Switzerland. However, no genetic variant has yet been associated with an almost completely white coat in this breed.
View Article and Find Full Text PDFEpithelial tissues are populated with accessory cells such as immune cells, sensory cells, and pigment-producing melanocytes, which must migrate through and intercalate between tightly adherent epithelial cells. Although much is known about how cells migrate through interstitial spaces consisting of predominantly of collagen-rich ECM and mesenchyme, how cells migrate through confined epithelial spaces without impairing barrier function is far less understood. Here, using live imaging of the mouse epidermis, we captured the migration of embryonic melanocytes (melanoblasts) while simultaneously visualizing the basement membrane or epithelial surfaces.
View Article and Find Full Text PDFCureus
July 2025
Department of Otorhinolaryngology, Head and Neck Surgery, University Hospital of Ioannina, Ioannina, GRC.
Metastatic melanoma to the parotid gland is rare and represents a significant diagnostic challenge due to its atypical presentation, often resembling benign conditions, resulting in delays in diagnosis. Early and accurate detection is crucial for optimizing patient outcomes. We report the case of a 27-year-old woman who presented with a slowly growing, painless mass in her right parotid gland, which had been enlarging over the past three months.
View Article and Find Full Text PDFCase Rep Dermatol
January 2025
Department of Dermatology, Weill Cornell Medicine, New York, NY, USA.
Introduction: Onychopapilloma is a benign nail tumor of the nail bed and distal matrix that typically presents as isolated longitudinal erythronychia on clinical examination. In 2021, Haneke et al. [J Cutan Pathol.
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