April 2017 in “Australasian Journal of Dermatology” The session covered updates on skin treatments, including radiotherapy, imiquimod, acitretin, JAK inhibitors, and strategies for managing rosacea and preventing surgical infections.
March 2026 in “Mendeley Data” rwSALT accurately measures hair regrowth in alopecia areata using scalp photos.
4350 citations
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May 2012 in “Arthritis & Rheumatism” The new SLICC criteria for diagnosing lupus are more sensitive and accurate than the old criteria.
5 citations
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June 2016 in “TURKDERM” Scoring systems help doctors assess and treat skin diseases effectively.
October 2022 in “The Laryngoscope” The InCISE score is a promising tool for assessing wound healing in head and neck surgery but needs more research for broader use.
January 2024 in “JEADV clinical practice” The study helps doctors use patient images to understand and apply SALT scores for treating severe alopecia areata.
2 citations
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January 2014 in “The Korean journal of medicine” The 2012 SLICC criteria provide an updated method for classifying Systemic Lupus Erythematosus.
March 2026 in “Mendeley Data” rwSALT provides precise hair regrowth measurement from scalp photos.
2 citations
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November 2024 in “PLoS ONE” Genomic prediction can improve breeding strategies for Korean Sapsaree dogs.
7 citations
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July 2024 in “Dermatology Practical & Conceptual” SII is a useful and affordable tool to assess and monitor alopecia areata.
6 citations
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December 2021 in “Journal of Clinical Medicine” LiPADI is a useful tool for monitoring the severity and treatment of lichen planus.
March 2026 in “SKIN The Journal of Cutaneous Medicine” All parts of the CLASI-A score are important for assessing skin activity in cutaneous lupus erythematosus.
9 citations
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January 2014 in “Postepy Dermatologii I Alergologii” The Polish Skindex-29 is a reliable and valid questionnaire for assessing the quality of life in Polish dermatology patients.
5 citations
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April 2024 in “JAAD International” AI can accurately measure hair loss severity in alopecia areata.
4 citations
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June 2022 in “Clinical, cosmetic and investigational dermatology” The new SFS Scale predicts hair transplant difficulty using hair and skin types, with thick skin and coily hair being hardest to work with.
42 citations
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November 2019 in “Frontiers in Endocrinology” The document suggests creating a validated score to diagnose Cushing's Syndrome and considers plasma steroid profiling as a simpler diagnostic method.
May 2024 in “JEADV Clinical Practice” A change in SALT scores of 42 or 43 indicates meaningful improvement in alopecia areata treatment.
March 2026 in “Pediatric Dermatology” Generative AI tools can accurately score alopecia areata, reducing subjectivity in evaluations.
3 citations
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October 2011 The updated criteria improve the accuracy of diagnosing lupus.
8 citations
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November 2009 in “The Neurologist/The neurologist” If someone has scaly skin, muscle stiffness, and intellectual disability, doctors should consider Sjogren-Larsson Syndrome, but other conditions if more symptoms are present.
3 citations
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October 2020 in “UNC Libraries” The new criteria for classifying lupus are more accurate and comprehensive.
Higher EULAR/ACR scores in SLE patients predict more organ damage.
October 2023 in “The Journal of Dermatology” The HSVS-A is an effective tool for quickly screening hair shedding in Asian women.
July 2024 in “Medical alphabet” The SBN system effectively assesses alopecia areata severity and predicts its course.
January 2026 in “Figshare” January 2026 in “Figshare”
1 citations
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September 2017 C-scores can help predict gain-of-function and loss-of-function mutations.
12 citations
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July 2011 in “European Journal of Dermatology” The VSCAPSI is a helpful method for evaluating the severity of scalp psoriasis.
1 citations
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December 2022 in “Sultan Qaboos University medical journal” The machine learning model accurately predicts Systemic Lupus Erythematosus in Omani patients.
June 2024 in “Nature Cell and Science” The Scalp Coverage Scoring method reliably measures hair density from images.