2021
DOI: 10.1109/tmi.2021.3055428
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Multi-Site Infant Brain Segmentation Algorithms: The iSeg-2019 Challenge

Abstract: To better understand early brain growth patterns in health and disorder, it is critical to accurately segment infant brain magnetic resonance (MR) images into white matter (WM), gray matter (GM), and cerebrospinal fluid (CSF). Deep learning-based methods have achieved state-of-the-art performance; however, one of major limitations is that the learning-based methods may suffer from the multi-site issue, that is, the models trained on a dataset from one site may not be applicable to the datasets acquired from ot… Show more

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Cited by 71 publications
(35 citation statements)
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“…Table 1 shows that there were large differences between the two datasets in terms of scanners and imaging parameters, resulting in different image contrasts/appearances/patterns, as shown in Figure 3. These results emphasize that models trained on one dataset with a set of specific imaging parameters tend to perform poorly for other datasets with different imaging parameters (protocols/scanners), which is consistent with previous observations (Sun et al, 2021).…”
Section: Resultssupporting
confidence: 91%
“…Table 1 shows that there were large differences between the two datasets in terms of scanners and imaging parameters, resulting in different image contrasts/appearances/patterns, as shown in Figure 3. These results emphasize that models trained on one dataset with a set of specific imaging parameters tend to perform poorly for other datasets with different imaging parameters (protocols/scanners), which is consistent with previous observations (Sun et al, 2021).…”
Section: Resultssupporting
confidence: 91%
“…As a result, many researchers rely on smaller proprietary datasets, making it challenging to show the full potential of their algorithms and even more challenging to compare their results against other published methods. Medical image analysis challenges (Menze et al, 2015;Simpson et al, 2019;Kurc et al, 2020;Orlando et al, 2020;Codella et al, 2019;Bernard et al, 2018;Sun et al, 2021;Heller et al, 2021;, therefore, play a pivotal role in the development of machine learning algorithms for medical image analysis by making large-scale, carefully labeled, multi-center, real-world datasets publicly available for training, testing, and comparing machine learning algorithms. In particular, the Brain Tumor Segmentation (BraTS) challenge has provided the community with a benchmarking platform to compare segmentation methods for over ten years, increasing the dataset size each year (Menze et al, 2015;Bakas et al, 2017c.…”
Section: Introductionmentioning
confidence: 99%
“…To promote the development of 6-month-old infant brain MRI segmentation, the MICCAI iSeg grand challenge was established (iSeg-2017/2019) and has become a benchmark in this field (Sun et al, 2021;Wang et al, 2019b).…”
Section: Deep Learning-based Methods That Automatically Extract Effective Hierarchy Features Improve Resultsmentioning
confidence: 99%