Abstract 1244P
Background
Immunohistochemical PD-L1 expression, a tissue-based biomarker that predicts response to immune checkpoint therapy, is used to guide treatment decisions in advanced non-small cell lung cancer (NSCLC). Artificial intelligence (AI) technology may optimize PD-L1 scoring in regard to standardization, accuracy and efficiency. However, previous such approaches failed to show consistency across samples derived from different sites and scanning devices.
Methods
We developed an AI software for automated PD-L1 tumor proportion scoring (TPS) according to international guidelines. Four pathologists assessed PD-L1 expression on 146 whole-slide images (WSI) of NSCLC biopsies obtained from three institutions, four scanning hardware types and the Ventana SP263 assay. Pathologists selected one representative region of interest (ROI) per WSI and scored PD-L1 without AI assistance (path-only). After a 2-week washout period, the same pathologists were presented with the same ROIs together with AI results (AI-only). Being able to adjust the AI results, pathologists concluded the final scores (AI+path). In addition, TPS scores were determined globally on the WSIs by the AI without human intervention and were compared against clinical WSI scores.
Results
For the threshold of TPS≥1%, inter-rater agreements between a) pathologist and AI+path, b) pathologist and AI-only, and c) AI-only and AI+path were 86.3%, 85.6%, and 89.7%, respectively (for TPS≥50%: a) 85.6%, b) 80.8%, c) 92.5%). With AI assistance, pathologists scored faster compared to manual scoring (median time: 72 vs. 117 sec/ROI; p<0.01). Additionally, scoring of WSIs by the AI without human intervention showed higher agreement with clinical scores than inter-human agreement (<85%) reported in literature.
Conclusions
Using challenging validation data from three institutions and four scanners, ROI scoring with the support of our AI PD-L1 quantifier showed high agreement with pathologists, while reducing assessment time. Of note, fully automatic global AI scoring on WSIs resulted in equally high agreement rates. These results demonstrate suitability and safety of the AI system for application in clinical routine, ultimately improving accuracy and efficiency of PD-L1 scoring.
Clinical trial identification
Editorial acknowledgement
Legal entity responsible for the study
Mindpeak GmbH.
Funding
Mindpeak GmbH.
Disclosure
R. Erber, C. Schaaf, N. Abele: Financial Interests, Personal, Speaker, Consultant, Advisor: Mindpeak GmbH. R. Banisch, M. Päpper, P. Frey, K. Daifalla, S. Günther: Financial Interests, Personal, Full or part-time Employment: Mindpeak GmbH. A. Hartmann: Financial Interests, Institutional, Research Funding: Mindpeak GmbH. T. Lang: Financial Interests, Personal, Stocks or ownership: Mindpeak GmbH. All other authors have declared no conflicts of interest.
Resources from the same session
1219P - Artificial intelligence-based breast cancer detection facilitates automated prognosis marker assessment using multiplex fluorescence immunohistochemistry
Presenter: Tim Mandelkow
Session: Poster session 14
1220P - Comprehensive diagnose of programmed death-ligand 1 from two-dimensional to three-dimensional in breast cancer with computer-aided artificial intelligence system
Presenter: Yi-Hsuan Lee
Session: Poster session 14
1221P - The functional domain of BRCA1/2 pathogenic variants (PVs) as potential biomarkers of second tumor and domain-related sensitivity to PARP-inhibitors
Presenter: Lorena Incorvaia
Session: Poster session 14
1222P - Detection of androgen-receptor splice variant 7 messenger RNA in circulating tumor cells of prostate cancer by in vitro assay
Presenter: Hoin Kang
Session: Poster session 14
1223P - Homologous recombination deficiency (HRD) testing on ovarian cancer ascites: A feasibility study
Presenter: Alberto Ranghiero
Session: Poster session 14
1224P - Detection of circulating tumor DNA (ctDNA) in untreated patients (pts) with cancer: Implications for early cancer detection (ECD)
Presenter: Yoshiaki Nakamura
Session: Poster session 14
1225P - Combining ctDNA and tissue-based-genomic profiling in advanced cancer: A real-world evidence prospective study in non-Western patients treated at Gustave Roussy cancer campus
Presenter: Tony Ibrahim
Session: Poster session 14
1226P - Multi-site validation of a deep learning solution for HER2 profiling of breast cancer from H&E-stained pathology slides
Presenter: Salim Arslan
Session: Poster session 14
1227P - Novel in vivo photonics-immunoassay system, inPROBE, for the rapid detection of HER2 in breast cancer
Presenter: Magdalena Staniszewska
Session: Poster session 14
1228P - A circulating tumor cell (CTC) based assay for diagnostic immunocytochemistry profiling of lung cancer
Presenter: Nitesh Rohatgi
Session: Poster session 14