As demand for dermatology continues to surge, health systems are feeling the strain of limited specialist capacity and growing patient backlogs. Long wait times—often driven by low-acuity referrals—are not just an inconvenience, but a threat to access, outcomes, and revenue. Emerging models, like store-and-forward teledermatology paired with AI-enabled clinical decision support, offer a powerful way to rethink triage and care delivery. This article explores how combining smarter workflows with advanced technology can help health systems improve efficiency, reduce costs, and keep more patients within their networks.
Skin conditions affect 30-70% of individuals in all geographies and age groups.1 A two year study at the University of Miami showed that 36% of primary care patients report at least one skin condition.2 But the demand for dermatology care is not static; rather it is increasing as the population ages and there is an increase in the prevalence of skin cancer and chronic inflammatory skin disease.3,4
A key challenge for health systems is the perennial shortage of dermatologists, particularly in rural and underserved areas.5 This shortage is only getting worse as the rate of dermatologists entering the workforce fails to keep pace with increasing demand.6 Not coincidentally, wait times for dermatology are increasing year over year, with the current average at 36.5 days.7
Long wait times for dermatology result in patient leakage and significant costs from delayed treatment.8,9 For conditions such as skin cancer, inflammatory dermatoses, or infections, delays may worsen prognosis or increase long-term costs. From both a clinical and health system perspective, diagnostic inefficiency in dermatology carries a substantial burden. Reducing diagnostic error and wait times is not only a matter of patient safety, but also of healthcare efficiency and cost containment.
Primary care is generally on the front line of providing initial evaluation, diagnosis, and triage of skin conditions.4 However, non-specialists receive limited dermatology training. As a consequence, there is low concordance between non-specialists and specialists for diagnosis and treatment.2,10 Primary care is also overburdened so may rapidly refer to save time. Studies show that up to 60% of referrals to dermatology could be handled at primary care.2,11,12 The unfortunate side effect is that low acuity cases clog dermatologist schedules and take focus away from higher acuity cases. This dynamic not only increases cost for less complex conditions but also reduces potential revenue if dermatologists were able to focus on more complex conditions.
Many health organizations use store-and-forward teledermatology to help address these issues. In this model, primary care sends eConsults to dermatologists. Dermatologists review the cases asynchronously then provide guidance on diagnosis and treatment. Studies show that store-and-forward achieves clinical outcomes comparable to traditional in-person dermatology consultations.13 Further, both patients and providers report high satisfaction.14
However, there are challenges for store-and-forward such as lack of technology support. Moreover, eConsults still depend on the limited specialist workforce; the same shortages affecting traditional care. This is where AI can help make a difference to further supplement and empower primary care.
Studies show that AI-enabled clinical decision support significantly improves diagnostic accuracy for primary care treating skin conditions.15,16 However, to realize an operational impact, this technology must be effectively integrated into clinical workflows. Store-and-forward presents an excellent opportunity to do just that. This is exactly the approach taken by Dermatic Health. Our platform supports both in-clinic and store-and-forward workflows, integrates with the EHR, and incorporates AI-enabled CDS between evaluation and eConsult. This model optimizes triage and reduces low acuity referrals. Our integrations and automations also improve workflow efficiency for completing an encounter, sending patient education, placing orders, and more.
Increasing demand for dermatology care presents both challenges and opportunities for health systems. A persistent shortage of dermatologists causes long wait times that are only exacerbated by low acuity referrals. Store-and-forward teledermatology is a proven workflow that can be supercharged with AI-enabled clinical decision support to optimize triage, reduce cost, and improve outcomes. By combining workflow innovation with advanced technology, health systems can improve efficiency and drive revenue, allowing them to focus more on increasing patient capture and less on preventing patient leakage.
1. Hay RJ, Johns NE, Williams HC, et al. The global burden of skin disease in 2010: an analysis of the prevalence and impact of skin conditions. J Invest Dermatol. 2014;134(6):1527-1534. doi:10.1038/jid.2013.446
2. Lowell BA, Froelich CW, Federman DG, Kirsner RS. Dermatology in primary care: Prevalence and patient disposition. J Am Acad Dermatol. 2001;45(2):250-255. doi:10.1067/mjd.2001.114598
3. Wang R, Chen Y, Shao X, et al. Burden of Skin Cancer in Older Adults From 1990 to 2021 and Modelled Projection to 2050. JAMA Dermatol. 2025;161(7):715-722. doi:10.1001/jamadermatol.2025.1276
4. Lim HW, Collins SAB, Resneck JS, et al. The burden of skin disease in the United States. J Am Acad Dermatol. 2017;76(5):958-972.e2. doi:10.1016/j.jaad.2016.12.043
5. Feng H, Berk-Krauss J, Feng PW, Stein JA. Comparison of Dermatologist Density Between Urban and Rural Counties in the United States. JAMA Dermatol. 2018;154(11):1265-1271. doi:10.1001/jamadermatol.2018.3022
6. Is there a shortage of dermatologists? PracticeLink. Accessed January 13, 2026. https://practicelinkwp.wpenginepowered.com/resource-center/physician-next-practice/is-there-a-shortage-of-dermatologists/
7. Wait times for a dermatology appointment U.S. 2025. Statista. Accessed January 12, 2026. https://www.statista.com/statistics/1489221/dermatology-office-wait-times-in-days/
8. Patients Are Waiting: America’s Dermatology Wait... : Journal of Dermatology for Physician Assistants. Ovid. Accessed January 14, 2026. https://www.ovid.com/jnls/jdpa/fulltext/01356735-201913020-00008~patients-are-waiting-americas-dermatology-wait-times
9. Barriers to Care-Seeking and Treatment Adherence Among Dermatology Patients: A Cross-Sectional National Survey Study. JDDonline - Journal of Drugs in Dermatology. Accessed January 14, 2026. https://jddonline.com/articles/barriers-to-care-seeking-and-treatment-adherence-among-dermatology-patients-a-cross-sectional-national-survey-study-S1545961622P0677X/
10. Bae GH, Hartman RI, Joyce C, Mostaghimi A. Comparing dermatology referral patterns and diagnostic accuracy between nonphysician providers, physician trainees, and attending physicians. J Am Acad Dermatol. 2016;75(1):226-227. doi:10.1016/j.jaad.2016.02.1213
11. González-Cruz C, Descalzo MÁ, Arias-Santiago S, et al. Proportion of Potentially Avoidable Referrals From Primary Care to Dermatologists for Cystic Lesions or Benign Neoplasms in Spain: Analysis of Data From the DIADERM Study. Actas Dermosifiliogr. 2019;110(8):659-665. doi:10.1016/j.ad.2019.02.003
12. Navein JF. Guidelines partly explain differences in referral rates. BMJ. 2002;325(7373):1177. doi:10.1136/bmj.325.7373.1177
13. Barros-Tornay R, Ferrándiz L, Martín-Gutiérrez FJ, et al. Feasibility and cost of a telemedicine-based short-term plan for initial access in general dermatology in Andalusia, Spain. JAAD Int. 2021;4:52-57. doi:10.1016/j.jdin.2021.05.002
14. Brinker TJ, Hekler A, von Kalle C, et al. Teledermatology: Comparison of Store-and-Forward Versus Live Interactive Video Conferencing. J Med Internet Res. 2018;20(10):e11871. doi:10.2196/11871
15. Esteva A, Kuprel B, Novoa RA, et al. Dermatologist-level classification of skin cancer with deep neural networks. Nature. 2017;542(7639):115-118. doi:10.1038/nature21056
16. Liu Y, Jain A, Eng C, et al. A deep learning system for differential diagnosis of skin diseases. Nat Med. 2020;26(6):900-908. doi:10.1038/s41591-020-0842-3