Tumor delineation for brain radiosurgery by a ConvNet and non-uniform patch generation

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Abstract

Deep learning methods are actively used for brain lesion segmentation. One of the most popular models is DeepMedic, which was developed for segmentation of relatively large lesions like glioma and ischemic stroke. In our work, we consider segmentation of brain tumors appropriate to stereotactic radiosurgery which limits typical lesion sizes. These differences in target volumes lead to a large number of false negatives (especially for small lesions) as well as to an increased number of false positives for DeepMedic. We propose a new patch-sampling procedure to increase network performance for small lesions. We used a 6-year dataset from a stereotactic radiosurgery center. To evaluate our approach, we conducted experiments with the three most frequent brain tumors: metastasis, meningioma, schwannoma. In addition to cross-validation, we estimated quality on a hold-out test set which was collected several years later than the train one. The experimental results show solid improvements in both cases.

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Krivov, E., Kostjuchenko, V., Dalechina, A., Shirokikh, B., Makarchuk, G., Denisenko, A., … Belyaev, M. (2018). Tumor delineation for brain radiosurgery by a ConvNet and non-uniform patch generation. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 11075 LNCS, pp. 122–129). Springer Verlag. https://doi.org/10.1007/978-3-030-00500-9_14

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