Prediction of immunochemotherapy response for diffuse large B‐cell lymphoma using artificial intelligence digital pathology

Author:

Lee Jeong Hoon1ORCID,Song Ga‐Young2,Lee Jonghyun3ORCID,Kang Sae‐Ryung4,Moon Kyoung Min56ORCID,Choi Yoo‐Duk7,Shen Jeanne8,Noh Myung‐Giun79ORCID,Yang Deok‐Hwan2

Affiliation:

1. Department of Radiology Stanford University School of Medicine Stanford CA USA

2. Department of Hematology‐Oncology Chonnam National University Hwasun Hospital Hwasun Republic of Korea

3. Department of Medical and Digital Engineering Hanyang University College of Engineering Seoul Republic of Korea

4. Department of Nuclear Medicine Chonnam National University Hwasun Hospital and Medical School Hwasun‐gun Republic of Korea

5. Division of Pulmonary and Allergy Medicine, Department of Internal Medicine Chung‐Ang University Hospital, Chung‐Ang University College of Medicine Seoul Republic of Korea

6. Artificial Intelligence, Ziovision Co., Ltd. Chuncheon Republic of Korea

7. Department of Pathology Chonnam National University Medical School Gwangju Republic of Korea

8. Department of Pathology and Center for Artificial Intelligence in Medicine & Imaging Stanford University School of Medicine Stanford CA USA

9. Department of Pathology School of Medicine, Ajou University Suwon Republic of Korea

Abstract

AbstractDiffuse large B‐cell lymphoma (DLBCL) is a heterogeneous and prevalent subtype of aggressive non‐Hodgkin lymphoma that poses diagnostic and prognostic challenges, particularly in predicting drug responsiveness. In this study, we used digital pathology and deep learning to predict responses to immunochemotherapy in patients with DLBCL. We retrospectively collected 251 slide images from 216 DLBCL patients treated with rituximab, cyclophosphamide, doxorubicin, vincristine, and prednisone (R‐CHOP), with their immunochemotherapy response labels. The digital pathology images were processed using contrastive learning for feature extraction. A multi‐modal prediction model was developed by integrating clinical data and pathology image features. Knowledge distillation was employed to mitigate overfitting on gigapixel histopathology images to create a model that predicts responses based solely on pathology images. Based on the importance derived from the attention mechanism of the model, we extracted histological features that were considered key textures associated with drug responsiveness. The multi‐modal prediction model achieved an impressive area under the ROC curve of 0.856, demonstrating significant associations with clinical variables such as Ann Arbor stage, International Prognostic Index, and bulky disease. Survival analyses indicated their effectiveness in predicting relapse‐free survival. External validation using TCGA datasets supported the model's ability to predict survival differences. Additionally, pathology‐based predictions show promise as independent prognostic indicators. Histopathological analysis identified centroblastic and immunoblastic features to be associated with treatment response, aligning with previous morphological classifications and highlighting the objectivity and reproducibility of artificial intelligence‐based diagnosis. This study introduces a novel approach that combines digital pathology and clinical data to predict the response to immunochemotherapy in patients with DLBCL. This model shows great promise as a diagnostic and prognostic tool for clinical management of DLBCL. Further research and genomic data integration hold the potential to enhance its impact on clinical practice, ultimately improving patient outcomes.

Funder

National Research Foundation of Korea

Chonnam National University Hwasun Hospital

Korea Health Industry Development Institute

National IT Industry Promotion Agency

Publisher

Wiley

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