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AI improves pathologists' interpretation of tissue samples

Pathologists' examinations of tissue samples from skin cancer tumours improved when they were assisted by an AI tool. The assessments became more consistent and patients' prognoses were described more accurately, details a new study.

The paper, published recently in JAMA Network Open, reports the results of a study led by Karolinska Institutet, conducted in collaboration with researchers from Yale University.

It is already known that tumour-infiltrating lymphocytes (TILs) are an important biomarker in several cancers, including malignant melanoma. TILs are immune cells found in or near the tumour, where they influence the body's response to the cancer. In malignant melanoma, the presence of TILs plays a role in both diagnosis and prognosis, with a high presence being favourable.

An important part of pathologists' work in malignant melanoma is to estimate the number of TILs. Researchers at Karolinska Institutet in Stockhom, Sweden, have now investigated how pathological assessments were affected by an AI tool trained to quantify TILs.

The study included 98 pathologists and researchers from other professions divided into two groups. One group consisted solely of experienced pathologists. They worked as usual by looking at digital images of stained tissue sections and estimating the amount of TILs according to current guidelines.

The second group included pathologists, but also researchers from other professions - all of whom had some experience in assessing pathological images. They also looked at the images as usual, but were assisted by AI support that quantified the number of TILs. Everyone assessed 60 tissue sections, all from patients with malignant melanoma. The study was retrospective, so the images showed tissue samples from patients whose diagnosis and treatment had already been determined.

The assessments made with AI support were superior to the others in several ways. Among other things, reproducibility was very high - the results were very similar regardless of who performed the review. The AI-supported assessments also provided a more accurate picture of the patients' disease prognoses - since the study was retrospective, there was a correct answer to compare with. However, this outcome was unknown to those who assessed the images.

Study author, Balazs Acs, Associate Professor at the Department of Oncology-Pathology at Karolinska Institutet and a clinically active pathologist, commented: "Understanding the severity of a patient's disease based on tissue samples is important, among other things, for determining how aggressively it should be treated. We now have an AI-based tool that can quantify the TIL biomarker, which could help with treatment decisions in the future. However, more studies are needed before this AI tool can be used in clinical practice, but the results so far are promising and suggest that it could be a very useful tool in clinical pathology.”

  • Aung TN, Liu M, Su D, et al. Pathologist-Read vs AI-Driven Assessment of Tumor-Infiltrating Lymphocytes in Melanoma. JAMA Netw Open. 2025 Jul 1; (7): e2518906. doi:10.1001/jamanetworkopen.2025.18906

 

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