Department of Advanced Medical and Surgical Sciences, University of Campania "Luigi Vanvitelli", Piazza Luigi Miraglia, 2, 80138, Naples, Italy.
Kelyon S.r.l., Via Benedetto Brin, 59 C5/C6, 80142, Naples, Italy.
Sci Rep. 2024 Sep 12;14(1):21348. doi: 10.1038/s41598-024-72649-9.
Segmentation of multiple sclerosis (MS) lesions on brain MRI scans is crucial for diagnosis, disease and treatment monitoring but is a time-consuming task. Despite several automated algorithms have been proposed, there is still no consensus on the most effective method. Here, we applied a consensus-based framework to improve lesion segmentation on T1-weighted and FLAIR scans. The framework is designed to combine publicly available state-of-the-art deep learning models, by running multiple segmentation tasks before merging the outputs of each algorithm. To assess the effectiveness of the approach, we applied it to MRI datasets from two different centers, including a private and a public dataset, with 131 and 30 MS patients respectively, with manually segmented lesion masks available. No further training was performed for any of the included algorithms. Overlap and detection scores were improved, with Dice increasing by 4-8% and precision by 3-4% respectively for the private and public dataset. High agreement was obtained between estimated and true lesion load (ρ = 0.92 and ρ = 0.97) and count (ρ = 0.83 and ρ = 0.94). Overall, this framework ensures accurate and reliable results, exploiting complementary features and overcoming some of the limitations of individual algorithms.
脑 MRI 扫描上多发性硬化症 (MS) 病变的分割对于诊断、疾病监测和治疗监测至关重要,但这是一项耗时的任务。尽管已经提出了几种自动化算法,但对于最有效的方法仍没有共识。在这里,我们应用了一种基于共识的框架来改善 T1 加权和 FLAIR 扫描上的病变分割。该框架旨在通过在合并每个算法的输出之前运行多个分割任务,结合公开的最先进的深度学习模型。为了评估该方法的有效性,我们将其应用于来自两个不同中心的 MRI 数据集,包括一个私有数据集和一个公共数据集,每个数据集分别有 131 名和 30 名 MS 患者,并且可以手动分割病变掩模。没有对任何包含的算法进行进一步的训练。对于私有和公共数据集,重叠和检测评分都有所提高,Dice 分别提高了 4-8%和 3-4%,精度提高了 3-4%。估计和真实病变负荷(ρ=0.92 和 ρ=0.97)和计数(ρ=0.83 和 ρ=0.94)之间的一致性很高。总的来说,该框架确保了准确可靠的结果,利用了互补的特征,并克服了个别算法的一些局限性。