The Role of Artificial Intelligence in Early Diagnosis and Molecular Classification of Head and Neck Skin Cancers: A Multidisciplinary Approach.
Zeliha Merve SemerciHavva Serap ToruEsra Çobankent AytekinHumeyra Tercanli AlkisDiana Maria ChioreanYalçın AlbayrakOvidiu Simion CotoiPublished in: Diagnostics (Basel, Switzerland) (2024)
Cancer remains a significant global health concern, with increasing genetic and metabolic irregularities linked to its onset. Among various forms of cancer, skin cancer, including squamous cell carcinoma, basal cell carcinoma, and melanoma, is on the rise worldwide, often triggered by ultraviolet (UV) radiation. The propensity of skin cancer to metastasize highlights the importance of early detection for successful treatment. This narrative review explores the evolving role of artificial intelligence (AI) in diagnosing head and neck skin cancers from both radiological and pathological perspectives. In the past two decades, AI has made remarkable progress in skin cancer research, driven by advances in computational capabilities, digitalization of medical images, and radiomics data. AI has shown significant promise in image-based diagnosis across various medical domains. In dermatology, AI has played a pivotal role in refining diagnostic and treatment strategies, including genomic risk assessment. This technology offers substantial potential to aid primary clinicians in improving patient outcomes. Studies have demonstrated AI's effectiveness in identifying skin lesions, categorizing them, and assessing their malignancy, contributing to earlier interventions and better prognosis. The rising incidence and mortality rates of skin cancer, coupled with the high cost of treatment, emphasize the need for early diagnosis. Further research and integration of AI into clinical practice are warranted to maximize its benefits in skin cancer diagnosis and treatment.
Keyphrases
- skin cancer
- artificial intelligence
- deep learning
- big data
- machine learning
- squamous cell carcinoma
- papillary thyroid
- global health
- risk assessment
- convolutional neural network
- clinical practice
- lymph node metastasis
- soft tissue
- healthcare
- risk factors
- wound healing
- physical activity
- systematic review
- human health
- childhood cancer
- computed tomography
- palliative care
- cardiovascular events
- heavy metals
- young adults
- genome wide
- magnetic resonance
- coronary artery disease
- radiation induced
- cardiovascular disease
- optical coherence tomography
- contrast enhanced
- electronic health record
- rectal cancer
- smoking cessation