دورية أكاديمية

RFS+: A Clinically Adaptable and Computationally Efficient Strategy for Enhanced Brain Tumor Segmentation

التفاصيل البيبلوغرافية
العنوان: RFS+: A Clinically Adaptable and Computationally Efficient Strategy for Enhanced Brain Tumor Segmentation
المؤلفون: Abdulkerim Duman, Oktay Karakuş, Xianfang Sun, Solly Thomas, James Powell, Emiliano Spezi
المصدر: Cancers, Vol 15, Iss 23, p 5620 (2023)
بيانات النشر: MDPI AG, 2023.
سنة النشر: 2023
المجموعة: LCC:Neoplasms. Tumors. Oncology. Including cancer and carcinogens
مصطلحات موضوعية: magnetic resonance imaging (MRI), brain tumor segmentation, U-net, region-focused selection (RFS), clinical applications, generalizability of deep learning model, Neoplasms. Tumors. Oncology. Including cancer and carcinogens, RC254-282
الوصف: Automated brain tumor segmentation has significant importance, especially for disease diagnosis and treatment planning. The study utilizes a range of MRI modalities, namely T1-weighted (T1), T1-contrast-enhanced (T1ce), T2-weighted (T2), and fluid-attenuated inversion recovery (FLAIR), with each providing unique and vital information for accurate tumor localization. While state-of-the-art models perform well on standardized datasets like the BraTS dataset, their suitability in diverse clinical settings (matrix size, slice thickness, manufacturer-related differences such as repetition time, and echo time) remains a subject of debate. This research aims to address this gap by introducing a novel ‘Region-Focused Selection Plus (RFS+)’ strategy designed to efficiently improve the generalization and quantification capabilities of deep learning (DL) models for automatic brain tumor segmentation. RFS+ advocates a targeted approach, focusing on one region at a time. It presents a holistic strategy that maximizes the benefits of various segmentation methods by customizing input masks, activation functions, loss functions, and normalization techniques. Upon identifying the top three models for each specific region in the training dataset, RFS+ employs a weighted ensemble learning technique to mitigate the limitations inherent in each segmentation approach. In this study, we explore three distinct approaches, namely, multi-class, multi-label, and binary class for brain tumor segmentation, coupled with various normalization techniques applied to individual sub-regions. The combination of different approaches with diverse normalization techniques is also investigated. A comparative analysis is conducted among three U-net model variants, including the state-of-the-art models that emerged victorious in the BraTS 2020 and 2021 challenges. These models are evaluated using the dice similarity coefficient (DSC) score on the 2021 BraTS validation dataset. The 2D U-net model yielded DSC scores of 77.45%, 82.14%, and 90.82% for enhancing tumor (ET), tumor core (TC), and the whole tumor (WT), respectively. Furthermore, on our local dataset, the 2D U-net model augmented with the RFS+ strategy demonstrates superior performance compared to the state-of-the-art model, achieving the highest DSC score of 79.22% for gross tumor volume (GTV). The model utilizing RFS+ requires 10% less training dataset, 67% less memory and completes training in 92% less time compared to the state-of-the-art model. These results confirm the effectiveness of the RFS+ strategy for enhancing the generalizability of DL models in brain tumor segmentation.
نوع الوثيقة: article
وصف الملف: electronic resource
اللغة: English
تدمد: 2072-6694
Relation: https://www.mdpi.com/2072-6694/15/23/5620; https://doaj.org/toc/2072-6694
DOI: 10.3390/cancers15235620
URL الوصول: https://doaj.org/article/b55b3c4f65574fbabc3d8c1047cc4fb6
رقم الأكسشن: edsdoj.b55b3c4f65574fbabc3d8c1047cc4fb6
قاعدة البيانات: Directory of Open Access Journals
الوصف
تدمد:20726694
DOI:10.3390/cancers15235620