Novel growth pattern‐specific digital marker of TILs improves stratification of lung adenocarcinoma patients
Arwa AlRubaian, Ayesha Azam, Nasir M Rajpoot, Shan E Ahmed Raza

TL;DR
A new AI-based marker called GPS-TILs improves the prediction of lung adenocarcinoma patient outcomes by combining tumor growth patterns and immune cell data.
Contribution
The novel GPS-TILs marker integrates tumor growth patterns and TILs data to provide more accurate patient stratification in lung adenocarcinoma.
Findings
GPS-TILs showed strong prognostic value for overall survival with a C-index of 0.59.
GPS-TILs outperformed conventional TIL-based measures and morphology-based approaches in patient stratification.
Abstract
Lung adenocarcinoma (LUAD) is one of the most prevalent forms of cancer and continues to be associated with high mortality rates, despite recent advances in cancer therapy. Effective risk stratification is critical for guiding treatment decisions and improving our understanding of disease mechanisms. However, current prognostic approaches face considerable limitations. Growth pattern‐based grading serves as a prognostic indicator of tumour aggressiveness, but is inherently subjective and prone to a high degree of variability among observers. Other well‐established prognostic indicators, such as tumour infiltrating lymphocytes (TILs) and stromal TILs (sTILs) scores, provide valuable prognostic information but require labour‐intensive assessment. The pronounced heterogeneity of LUAD further complicates prognosis and underscores the need for robust, integrative biomarkers that capture both…
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Taxonomy
TopicsCancer Immunotherapy and Biomarkers · Ferroptosis and cancer prognosis · Radiomics and Machine Learning in Medical Imaging
