Matches in SemOpenAlex for { <https://semopenalex.org/work/W4386805057> ?p ?o ?g. }
- W4386805057 endingPage "100259" @default.
- W4386805057 startingPage "100259" @default.
- W4386805057 abstract "A substantial body of research has been published in artificial intelligence due to the rising incidence of skin cancer, the scarcity of specialized healthcare professionals, and rapid advancements in automated diagnosis and treatment methods. We present a comprehensive review using text mining to identify key themes of artificial intelligence in skin cancer diagnosis and treatment research. Our text mining model uncovers nine topics, including dermatological data, machine and deep learning methods, segmentation, data generation, melanoma, basal cell carcinoma, model validation, and treatment. We extensively review the literature on each topic to offer valuable insights and highlight research gaps. Our findings indicate a need for a comprehensive and diverse dataset that includes lesion images, clinical data, and treatment information. In addition, our topic analysis ranks deep learning-based diagnosis as the top topic, followed by data generation and melanoma diagnosis. These insights demonstrate the bias towards deep learning methods and the shortage of studies on rare and precancerous skin lesions. Despite the gaps defined, artificial intelligence can be utilized for triage, initial screening, a second opinion in diagnosing complex cases, and an educational resource. Additionally, artificial intelligence models can enhance patient outcomes through early diagnosis, treatment recommendation, and treatment response prediction." @default.
- W4386805057 created "2023-09-17" @default.
- W4386805057 creator A5015221914 @default.
- W4386805057 creator A5016103039 @default.
- W4386805057 creator A5042728184 @default.
- W4386805057 creator A5047784182 @default.
- W4386805057 date "2023-12-01" @default.
- W4386805057 modified "2023-10-16" @default.
- W4386805057 title "A comprehensive review of artificial intelligence methods and applications in skin cancer diagnosis and treatment: Emerging trends and challenges" @default.
- W4386805057 cites W1971277865 @default.
- W4386805057 cites W2001082470 @default.
- W4386805057 cites W2002507614 @default.
- W4386805057 cites W2006604430 @default.
- W4386805057 cites W2008056655 @default.
- W4386805057 cites W2026720263 @default.
- W4386805057 cites W2090578816 @default.
- W4386805057 cites W2093605115 @default.
- W4386805057 cites W2581082771 @default.
- W4386805057 cites W2618530766 @default.
- W4386805057 cites W2786147899 @default.
- W4386805057 cites W2797527544 @default.
- W4386805057 cites W2888442043 @default.
- W4386805057 cites W2892342267 @default.
- W4386805057 cites W2903060508 @default.
- W4386805057 cites W2911818805 @default.
- W4386805057 cites W2911964244 @default.
- W4386805057 cites W2921785317 @default.
- W4386805057 cites W2948657385 @default.
- W4386805057 cites W2954996726 @default.
- W4386805057 cites W2962949934 @default.
- W4386805057 cites W2963881378 @default.
- W4386805057 cites W2976786915 @default.
- W4386805057 cites W2991028045 @default.
- W4386805057 cites W3000396219 @default.
- W4386805057 cites W3004895274 @default.
- W4386805057 cites W3007268491 @default.
- W4386805057 cites W3014403957 @default.
- W4386805057 cites W302048977 @default.
- W4386805057 cites W3021577186 @default.
- W4386805057 cites W3081386409 @default.
- W4386805057 cites W3081500256 @default.
- W4386805057 cites W3097337942 @default.
- W4386805057 cites W3102785203 @default.
- W4386805057 cites W3103134014 @default.
- W4386805057 cites W3119105486 @default.
- W4386805057 cites W3120507271 @default.
- W4386805057 cites W3121732873 @default.
- W4386805057 cites W3134057671 @default.
- W4386805057 cites W3139670053 @default.
- W4386805057 cites W3141661082 @default.
- W4386805057 cites W3190348435 @default.
- W4386805057 cites W3201898231 @default.
- W4386805057 cites W3203818485 @default.
- W4386805057 cites W3207476035 @default.
- W4386805057 cites W4200084053 @default.
- W4386805057 cites W4200500496 @default.
- W4386805057 cites W4205553856 @default.
- W4386805057 cites W4206576513 @default.
- W4386805057 cites W4212957671 @default.
- W4386805057 cites W4226071558 @default.
- W4386805057 cites W4281670481 @default.
- W4386805057 cites W4282015982 @default.
- W4386805057 cites W4283016217 @default.
- W4386805057 cites W4285006465 @default.
- W4386805057 cites W4285093889 @default.
- W4386805057 cites W4285529244 @default.
- W4386805057 cites W4291237368 @default.
- W4386805057 cites W4294349358 @default.
- W4386805057 cites W4296995864 @default.
- W4386805057 cites W4303578837 @default.
- W4386805057 cites W4308889883 @default.
- W4386805057 cites W4312140872 @default.
- W4386805057 cites W4312597893 @default.
- W4386805057 cites W4317770553 @default.
- W4386805057 cites W4320913615 @default.
- W4386805057 cites W4321105130 @default.
- W4386805057 cites W4321188839 @default.
- W4386805057 cites W4362518828 @default.
- W4386805057 doi "https://doi.org/10.1016/j.health.2023.100259" @default.
- W4386805057 hasPublicationYear "2023" @default.
- W4386805057 type Work @default.
- W4386805057 citedByCount "0" @default.
- W4386805057 crossrefType "journal-article" @default.
- W4386805057 hasAuthorship W4386805057A5015221914 @default.
- W4386805057 hasAuthorship W4386805057A5016103039 @default.
- W4386805057 hasAuthorship W4386805057A5042728184 @default.
- W4386805057 hasAuthorship W4386805057A5047784182 @default.
- W4386805057 hasBestOaLocation W43868050571 @default.
- W4386805057 hasConcept C108583219 @default.
- W4386805057 hasConcept C119857082 @default.
- W4386805057 hasConcept C121608353 @default.
- W4386805057 hasConcept C126322002 @default.
- W4386805057 hasConcept C154945302 @default.
- W4386805057 hasConcept C194828623 @default.
- W4386805057 hasConcept C2522767166 @default.
- W4386805057 hasConcept C2777120189 @default.
- W4386805057 hasConcept C2777789703 @default.
- W4386805057 hasConcept C41008148 @default.