2020
DOI: 10.1117/1.jmi.7.1.012705
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Deep learning-based segmentation of malignant pleural mesothelioma tumor on computed tomography scans: application to scans demonstrating pleural effusion

Abstract: Tumor volume is a topic of interest for the prognostic assessment, treatment response evaluation, and staging of malignant pleural mesothelioma. Many mesothelioma patients present with, or develop, pleural fluid, which may complicate the segmentation of this disease. Deep convolutional neural networks (CNNs) of the two-dimensional U-Net architecture were trained for segmentation of tumor in the left and right hemithoraces, with the networks initialized through layers pretrained on ImageNet. Networks were train… Show more

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Cited by 13 publications
(10 citation statements)
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References 37 publications
(54 reference statements)
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“…Nevertheless, extremely detailed ground truth was used for training, validation and comparisons between volumetry methods and readers, reducing the number of individual patients needed. The selection of 10 cases for inter-reader comparisons was arbitrary but followed precedents set in recent similar publications, including Brahim et al, 32 in which an identical number were evaluated and Sensakovic et al 33 and Gudmundsson et al 34 in which a larger number of patients, but a significantly smaller number of CT sections were interrogated. Sensakovic et al compared a total of 155 CT slices between readers (31 patients, 5 CT slices each), while Gudmundsson et al compared a total of 69 CT slices from 27 patients.…”
Section: Discussionmentioning
confidence: 99%
“…Nevertheless, extremely detailed ground truth was used for training, validation and comparisons between volumetry methods and readers, reducing the number of individual patients needed. The selection of 10 cases for inter-reader comparisons was arbitrary but followed precedents set in recent similar publications, including Brahim et al, 32 in which an identical number were evaluated and Sensakovic et al 33 and Gudmundsson et al 34 in which a larger number of patients, but a significantly smaller number of CT sections were interrogated. Sensakovic et al compared a total of 155 CT slices between readers (31 patients, 5 CT slices each), while Gudmundsson et al compared a total of 69 CT slices from 27 patients.…”
Section: Discussionmentioning
confidence: 99%
“…The way in which a human observer deals with these challenges is by looking at adjacent slices and determining whether a pattern represents a manifestation of pathology or an acquisition artefact. That could be addressed by either incorporating 3D patches [ 38 , 39 ], which, however, comes with aforementioned challenges, or using only a few adjacent slices to predict labels for the middle slice [ 40 , 41 ], which we plan to explore in future.…”
Section: Discussionmentioning
confidence: 99%
“…One of the frequently used strategies for addressing the scarce data problem is data augmentation, by either modifying the original data [92 ,106-110], or generating synthetic data [62 ,64-67 ,111]. Transfer learning after pre-training of the deep learning models on other large datasets was also used to mitigate the lack of data issue [112][113][114][115][116].…”
Section: Discussionmentioning
confidence: 99%