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Portuguese Journal of Dermatology and Venereology

versão impressa ISSN 2795-501Xversão On-line ISSN 2795-5001

Port J Dermatol Venereol. vol.81 no.3 Lisboa ago. 2023  Epub 17-Jul-2023

https://doi.org/10.24875/pjdv.23000038 

LETTER TO THE EDITOR

The potential use of artificial intelligence in the evaluation and treatment of patients with psoriasis

A potencial utilização da inteligência artificial na avaliação e tratamento de doentes com psoríase

Joana Vieitez-Frade1  *  https://orcid.org/0000-0002-5471-7889

Paulo Filipe1  2  3 

1Dermatology and Venereology Department, Centro Hospitalar Universitário Lisboa Norte, EPE

2Dermatology and Venereology University Clinic, Faculdade de Medicina da Universidade de Lisboa

3Dermatology Research Unit, iMM Joao Lobo Antunes, Universidade de Lisboa. Lisbon, Portugal


Dear Editor,

Artificial intelligence (AI) is a computer science that focuses on developing algorithmic programs that aim to reproduce human cognition and processes involved in the analysis of complex data. Recent advances in this field have improved current medical practice, particularly helpful in basic research, diagnosis accuracy, image recognition, treatment decision, and surgical assistance. Several AI studies have been focusing on dermatological disorders such as skin cancer, inflammatory dermatosis, and onychomycosis1.

Psoriasis is an inflammatory skin disease that has been widely studied, although the molecular mechanisms and pathophysiology are not yet fully understood. AI has been implicated as a relevant and innovative tool in molecular biology, clinical assessment, customize treatment protocols, and outcome predictions in psoriatic patients2.

Artificial intelligence (AI) has been tested for the clinical and histopathological diagnosis of psoriasis. For example, Shrivastava et al. achieved 99% clinical diagnostic accuracy with a support vector machine model after classifying 540 skin images1. In another study, the algorithm classified 8,021 images of eight common disorders (lichen planus, lupus erythematosus, basal cell carcinoma, squamous cell carcinoma, atopic dermatitis, pemphigus, psoriasis, and seborrheic keratosis), with a misdiagnosis psoriasis rate of 3% compared to 27% by dermatologists3. Furthermore, similar results were demonstrated between convolutional neural networks and dermatologists when comparing their performance in classifying dermoscopic images of psoriasis4. Pal et al. presented a computational framework that detects Munro's microabscesses in the epidermal stratum corneum of the skin from biopsy images5.

The three most used indicators to evaluate psoriasis severity are the psoriasis area severity index (PASI), body surface area (BSA), and Physician Global Assessment (PGA). AI use in BSA and PASI measurements could greatly reduce the workload of doctors while ensuring a high degree of repeatability and standardization2. These tools could also allow long-distance follow-up of patients with psoriasis, which would be particularly interesting for locations with low access to differentiated health care. Currently, machine learning- based algorithms are already available to determine BSA scores, which have shown promising results, as they overcome dermatologists in measurement accuracy6. Besides no algorithm has been validated for scoring independently PASI score yet, recently Huang et al. proposed an image-AI-based PASI-estimating model that outperformed the average performance of 43 experienced dermatologists2.

In addition to these applications, several recent studies report the usefulness of AI in the timely diagnosis of psoriatic comorbidities, including psoriatic arthritis, which may influence the prognosis of these patients. Mulder et al. found that by combining comprehensive peripheral blood immune cell flow cytometry with machine learning techniques, they were able to distinguish immune cell profiles that could differentiate patients with psoriatic arthritis who would benefit from timely referral to a rheumatology clinic7.

Artificial intelligence (AI) has also shown promising results in the development of predictive models that can help identify psoriatic patients who are likely to respond to specific treatments. By analyzing data on a patient's medical history, genetics, and disease activity, AI algorithms can identify the most effective treatment options for that individual. This approach has the potential to improve patient outcomes and reduce the risk of side effects associated with ineffective treatments. Damiani et al. developed a predictive model using artificial neural networks on patients treated with secukinumab, predicting fast responders based on 15 continuous variables, such as BSA, white blood count, hemoglobin, platelets, and liver function tests8. AI has also been used in order to identify drug interactions based on semantic predictions extracted from medical databases and predict long-term responses to biologics9,10.

Despite these promising applications, there are also challenges associated with the use of AI in psoriasis. One major challenge is the need for high-quality data to train these algorithms. This requires large datasets of patient information, which may be difficult to obtain in some cases. Additionally, there are concerns about the ethical and regulatory implications of using AI in healthcare, particularly in the context of patient privacy and data security1.

In conclusion, AI is developing at lightning speed in the dermatological field, so its use in clinical practice is expected to increase exponentially in the coming years.

REFERENCES

1. Hogarty DT, Su JC, Phan K, Attia M, Hossny M, Nahavandi S, et al. Artificial intelligence in dermatology-where we are and the way to the future:a review. Am J Clin Dermatol. 2020;21:41-7. [ Links ]

2. Yu K, Syed MN, Bernardis E, Gelfand JM. Machine learning applications in the evaluation and management of psoriasis:a systematic review. J Psoriasis Psoriatic Arthritis. 2020;5:147-59. [ Links ]

3. Huang K, Wu X, Li Y, Lv C, Yan Y, Wu Z, et al. Artificial intelligence-based psoriasis severity assessment:real-world study and application. J Med Internet Res. 2023;25:e44932. [ Links ]

4. Yang Y, Wang J, Xie F, Liu J, Shu C, Wang Y, et al. A convolutional neural network trained with dermoscopic images of psoriasis performed on par with 230 dermatologists. Comput Biol Med. 2021;139:104924. [ Links ]

5. Pal A, Chaturvedi A, Chandra, A, Chatterjee R, Senapati S, Frangi AF, et al. Multi-instance capsule network for machine inspection of munro's microabscess. Comput Biol Med. 2022;140:105071. [ Links ]

6. Lee WH, Lee S, Kim J, Han J, Kim Y, Kim J, et al. Measurement of psoriasis-affected area with artificial neural network. J Am Acad Dermatol. 2023;88:731-32. [ Links ]

7. Mulder MLM, He X, Van-den-Reek JMPA, Urbano PCM, Kaffa C, Wang X, et al. Blood-based immune profiling combined with machine learning discriminates psoriatic arthritis from psoriasis patients. Int J Mol Sci. 2021;22:10990. [ Links ]

8. Damiani G, Conic RRZ, Pigatto PDM, Carrera C, Franchi C, Cattaneo A, et al. Predicting Secukinumab Fast-Responder Profile in Psoriatic Patients:Advanced Application of Artificial-Neural-Networks (ANNs). J Drugs Dermatol. 2020;19:1241-1246. [ Links ]

9. Zhang R, Cairelli MJ, Fiszman M, Rosemblat G, Kilicoglu H, Rindflesch T, et al. Using semantic predictions to uncover drug-drug interactions in clinical data. J Biomed Inform. 2014;49:134-47. [ Links ]

10. Emam S, Du AX, Surmanowicz P, Thomsen SF, Greiner R, Gniadecki R. Predicting the long-term outcomes of biologics in patients with psoriasis using machine learning. Br J Dermatol. 2020;182:1305–7. [ Links ]

FundingNone.

Ethical disclosures

Protection of human and animal subjects. The authors declare that no experiments were performed on humans or animals for this study.

Confidentiality of data. The authors declare that no patient data appear in this article.

Right to privacy and informed consent. The authors declare that no patient data appear in this article.

Use of artificial intelligence for generating text. The authors declare that they have not used any type of generative AI for the writing of this manuscript nor for the creation of images, graphics, tables, or their corresponding captions.

Received: May 03, 2023; Accepted: June 17, 2023

*Correspondence: Joana Vieitez-Frade E-mail: joanamvfrade@gmail.com

Conflicts of interest

None.

Creative Commons License Portuguese Society of Dermatology and Venereology. Published by Permanyer. This is an open access article under the CC BY-NC-ND license