AI Unlocks Personalized Psoriasis Treatment

King’s College London

Identification of sub-categories of the disease linked to gene expression also sheds light on why current treatments may fail.

David Watson psoiasis AI thumbnail
A man scratching with psoriasis afflicted elbow in front of a doctor

A new major finding in how genes are linked to psoriasis could help offer tailored treatments for the common inflammatory condition, helping to treat the most stubborn and severe cases.

Psoriasis is a common inflammatory skin disease, with 1 in 50 people in the UK affected in some form. Despite its links to several long-term health conditions, such as heart disease and Type 2 diabetes, and the substantial impact severe psoriasis has on sufferers' quality of life, little is known about the causes of inflammatory and autoimmune diseases like it. This includes ailments like rheumatoid arthritis, lupus and Crohn's disease.

Because of this lack of understanding, current, high-cost treatment options such as biologics can fail for no visible reason - impacting patients and placing severe cost on the NHS.

By using advanced Machine Learning, researchers from King's, Newcastle University, and Queen Mary University of London, have identified several sub-types of the disease based on how someone's genes impact psoriasis severity. This classification will give clinicians a better idea of why current treatments may fail and open the door to more personalised ones.

By using RNA sequencing and AI modelling, we can now categorise how genes affect the trajectory of psoriasis and group the disease into several sub-types as a prerequisite for better treatment - helping better deal with the most severe cases."

Dr David Watson

Dr David Watson, Lecturer in Artificial Intelligence and joint first author of the study said, "Diseases that present the same are often completely different. Breast cancer for example is not one, but a thousand different diseases all under the same label. To be able to develop targeted treatments you need to understand how all these different diseases work, or risk 'fat-fingered' interventions like chemotherapy which can have large side effects.

"Until now, we didn't have that with psoriasis. But by using RNA sequencing and AI modelling, we can now categorise how genes affect the trajectory of psoriasis and group the disease into several sub-types as a prerequisite for better treatment - helping better deal with the most severe cases."

Analysing 700 plus blood samples from over 140 patients with moderate to severe psoriasis over an extended period, the team mapped how genes interfaced both individually and in evolving networks with other biological factors, like BMI, to impact disease severity against common biologic treatments.

By figuring out how genes influence the path of one inflammatory disease, we hope to take this learning and apply it to a host of different diseases and see how they materialise in patients. If we can categorise the gene expression there too, we could potentially design personalised treatments for all these ailments which plague patients and cost our healthcare system millions."

Dr David Watson

They identified a nine-gene biomarker linked to psoriasis severity, along with specific genetic variants associated with more severe baseline disease. They also found a 14-gene signature connected to BMI in unaffected skin and to disease severity in affected skin displaying lesions.

In the future, the researchers hope to take they have learned from the gene expression involved in this inflammatory disease and apply it to others.

Dr Watson said "There are many immune mediated inflammatory diseases, like rheumatoid arthritis and Crohn's. And while they present differently, we know they are genetically linked - having one increases the risk of passing another to your kids.

"This is a complex world and by figuring out how genes influence the path of one inflammatory disease, we hope to take this learning and apply it to a host of different diseases and see how they materialise in patients. If we can categorise the gene expression there too, we could potentially design personalised treatments for all these ailments which plague patients and cost our healthcare system millions."

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