Literature DB >> 31093517

Radiomics-based convolutional neural network for brain tumor segmentation on multiparametric magnetic resonance imaging.

Prateek Prasanna1, Ayush Karnawat1, Marwa Ismail1, Anant Madabhushi1,2, Pallavi Tiwari1.   

Abstract

Accurate segmentation of gliomas on routine magnetic resonance image (MRI) scans plays an important role in disease diagnosis, prognosis, and patient treatment planning. We present a fully automated approach, radiomics-based convolutional neural network (RadCNN), for segmenting both high- and low-grade gliomas using multimodal MRI volumes (T1c, T2w, and FLAIR). RadCNN incorporates radiomic texture features (i.e., Haralick, Gabor, and Laws) within DeepMedic [a deep 3-D convolutional neural network (CNN) segmentation framework that uses image intensities; a top performing method in the BraTS 2016 challenge] to further augment the performance of brain tumor subcompartment segmentation. We first identify textural radiomic representations that best separate the different subcompartments [enhancing tumor (ET), whole tumor (WT), and tumor core (TC)] on the training set, and then feed these representations as inputs to the CNN classifier for prediction of different subcompartments. We hypothesize that textural radiomic representations of lesion subcompartments will enhance the separation of subcompartment boundaries, and hence providing these features as inputs to the deep CNN, over and above raw intensity values alone, will improve the subcompartment segmentation. Using a training set of N = 241 patients, validation set of N = 44 , and test set of N = 46 patients, RadCNN method achieved Dice similarity coefficient (DSC) scores of 0.71, 0.89, and 0.73 for ET, WT, and TC, respectively. Compared to the DeepMedic model, RadCNN showed improvement in DSC scores for both ET and WT and demonstrated comparable results in segmenting the TC. Similarly, smaller Hausdorff distance measures were obtained with RadCNN as compared to the DeepMedic model across all the subcompartments. Following the segmentation of the different subcompartments, we extracted a set of subcompartment specific radiomic descriptors that capture lesion disorder and assessed their ability in separating patients into different survival cohorts (short-, mid- and long-term survival) based on their overall survival from the date of baseline diagnosis. Using a multilinear regression approach, we achieved accuracies of 0.57, 0.63, and 0.45 for the training, validation, and test cases, respectively.

Entities:  

Keywords:  convolutional neural network; feature selection; gliomas; radiomics; segmentation

Year:  2019        PMID: 31093517      PMCID: PMC6503346          DOI: 10.1117/1.JMI.6.2.024005

Source DB:  PubMed          Journal:  J Med Imaging (Bellingham)        ISSN: 2329-4302


  22 in total

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5.  Statistics corner: A guide to appropriate use of correlation coefficient in medical research.

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8.  Brain tumor target volume determination for radiation treatment planning through automated MRI segmentation.

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Review 9.  Long-term survival with glioblastoma multiforme.

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10.  Glioma: application of whole-tumor texture analysis of diffusion-weighted imaging for the evaluation of tumor heterogeneity.

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  4 in total

Review 1.  Radiomics in radiation oncology-basics, methods, and limitations.

Authors:  Philipp Lohmann; Khaled Bousabarah; Mauritius Hoevels; Harald Treuer
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2.  Computer-aided diagnosis of masses in breast computed tomography imaging: deep learning model with combined handcrafted and convolutional radiomic features.

Authors:  Marco Caballo; Andrew M Hernandez; Su Hyun Lyu; Jonas Teuwen; Ritse M Mann; Bram van Ginneken; John M Boone; Ioannis Sechopoulos
Journal:  J Med Imaging (Bellingham)       Date:  2021-03-29

Review 3.  Radiomics and radiogenomics in gliomas: a contemporary update.

Authors:  Prateek Prasanna; Vadim Spektor; Gagandeep Singh; Sunil Manjila; Nicole Sakla; Alan True; Amr H Wardeh; Niha Beig; Anatoliy Vaysberg; John Matthews
Journal:  Br J Cancer       Date:  2021-05-06       Impact factor: 7.640

4.  Radiomic Deformation and Textural Heterogeneity (R-DepTH) Descriptor to Characterize Tumor Field Effect: Application to Survival Prediction in Glioblastoma.

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Journal:  IEEE Trans Med Imaging       Date:  2022-06-30       Impact factor: 11.037

  4 in total

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