دورية أكاديمية

MAMILNet: advancing precision oncology with multi-scale attentional multi-instance learning for whole slide image analysis

التفاصيل البيبلوغرافية
العنوان: MAMILNet: advancing precision oncology with multi-scale attentional multi-instance learning for whole slide image analysis
المؤلفون: Qinqing Wang, Qiu Bi, Linhao Qu, Yuchen Deng, Xianhong Wang, Yijun Zheng, Chenrong Li, Qingyin Meng, Kun Miao
المصدر: Frontiers in Oncology, Vol 14 (2024)
بيانات النشر: Frontiers Media S.A., 2024.
سنة النشر: 2024
المجموعة: LCC:Neoplasms. Tumors. Oncology. Including cancer and carcinogens
مصطلحات موضوعية: whole slide image analysis, multiple instance learning, cancer diagnosis, multi-scale attention, deep learning, Neoplasms. Tumors. Oncology. Including cancer and carcinogens, RC254-282
الوصف: BackgroundWhole Slide Image (WSI) analysis, driven by deep learning algorithms, has the potential to revolutionize tumor detection, classification, and treatment response prediction. However, challenges persist, such as limited model generalizability across various cancer types, the labor-intensive nature of patch-level annotation, and the necessity of integrating multi-magnification information to attain a comprehensive understanding of pathological patterns.MethodsIn response to these challenges, we introduce MAMILNet, an innovative multi-scale attentional multi-instance learning framework for WSI analysis. The incorporation of attention mechanisms into MAMILNet contributes to its exceptional generalizability across diverse cancer types and prediction tasks. This model considers whole slides as “bags” and individual patches as “instances.” By adopting this approach, MAMILNet effectively eliminates the requirement for intricate patch-level labeling, significantly reducing the manual workload for pathologists. To enhance prediction accuracy, the model employs a multi-scale “consultation” strategy, facilitating the aggregation of test outcomes from various magnifications.ResultsOur assessment of MAMILNet encompasses 1171 cases encompassing a wide range of cancer types, showcasing its effectiveness in predicting complex tasks. Remarkably, MAMILNet achieved impressive results in distinct domains: for breast cancer tumor detection, the Area Under the Curve (AUC) was 0.8872, with an Accuracy of 0.8760. In the realm of lung cancer typing diagnosis, it achieved an AUC of 0.9551 and an Accuracy of 0.9095. Furthermore, in predicting drug therapy responses for ovarian cancer, MAMILNet achieved an AUC of 0.7358 and an Accuracy of 0.7341.ConclusionThe outcomes of this study underscore the potential of MAMILNet in driving the advancement of precision medicine and individualized treatment planning within the field of oncology. By effectively addressing challenges related to model generalization, annotation workload, and multi-magnification integration, MAMILNet shows promise in enhancing healthcare outcomes for cancer patients. The framework’s success in accurately detecting breast tumors, diagnosing lung cancer types, and predicting ovarian cancer therapy responses highlights its significant contribution to the field and paves the way for improved patient care.
نوع الوثيقة: article
وصف الملف: electronic resource
اللغة: English
تدمد: 2234-943X
Relation: https://www.frontiersin.org/articles/10.3389/fonc.2024.1275769/full; https://doaj.org/toc/2234-943X
DOI: 10.3389/fonc.2024.1275769
URL الوصول: https://doaj.org/article/a1b15e5fa1ca4f8f977293802b64bf66
رقم الأكسشن: edsdoj.1b15e5fa1ca4f8f977293802b64bf66
قاعدة البيانات: Directory of Open Access Journals
الوصف
تدمد:2234943X
DOI:10.3389/fonc.2024.1275769