Literature DB >> 32974873

Deep Learning Model for the Automated Detection and Histopathological Prediction of Meningioma.

Hua Zhang1,2,3, Jiajie Mo1,2,3, Han Jiang4, Zhuyun Li4,5, Wenhan Hu1,2,3, Chao Zhang1,2,3, Yao Wang1,2,3, Xiu Wang1,2,3, Chang Liu1,2,3, Baotian Zhao1,2,3, Jianguo Zhang6,7,8, Kai Zhang9,10,11.   

Abstract

The volumetric assessment and accurate grading of meningiomas before surgery are highly relevant for therapy planning and prognosis prediction. This study was to design a deep learning algorithm and evaluate the performance in detecting meningioma lesions and grade classification. In total, 5088 patients with histopathologically confirmed meningioma were retrospectively included. The pyramid scene parsing network (PSPNet) was trained to automatically detect and delineate the meningiomas. The results were compared to manual segmentations by evaluating the mean intersection over union (mIoU). The performance of grade classification was evaluated by accuracy. For the automated detection and segmentation of meningiomas, the mean pixel accuracy, tumor accuracy, background accuracy and mIoU were 99.68%, 81.36%, 99.88% and 81.36% for all patients; 99.52%, 84.86%, 99.93% and 84.86% for grade I meningiomas; 99.57%, 80.11%, 99.92% and 80.12% for grade II meningiomas; and 99.75%, 78.40%, 99.99% and 78.40% for grade III meningiomas, respectively. For grade classification, the accuracy values of the training and test datasets were 99.93% and 81.52% for all patients; 99.98% and 98.51% for grade I meningiomas; 99.91% and 66.67% for grade II meningiomas; and 99.88% and 73.91% for grade III meningiomas, respectively. The automated detection, segmentation and grade classification of meningiomas based on deep learning were accurate and reliable and may improve the monitoring and treatment of this frequently occurring tumor entity. Furthermore, the method could function as a useful tool for preassessment and preselection for radiologists, offering auxiliary information for clinical decision making in presurgical evaluation.

Entities:  

Keywords:  Deep learning; Delineation; Grade classification; Meningiomas; PSPNet

Year:  2020        PMID: 32974873     DOI: 10.1007/s12021-020-09492-6

Source DB:  PubMed          Journal:  Neuroinformatics        ISSN: 1539-2791


  9 in total

1.  Metabolic phenotyping of hand automatisms in mesial temporal lobe epilepsy.

Authors:  Jiajie Mo; Yao Wang; Jianguo Zhang; Lixin Cai; Qingzhu Liu; Wenhan Hu; Lin Sang; Chao Zhang; Xiu Wang; Xiaoqiu Shao; Kai Zhang
Journal:  EJNMMI Res       Date:  2022-06-03       Impact factor: 3.434

Review 2.  Machine Learning for the Detection and Segmentation of Benign Tumors of the Central Nervous System: A Systematic Review.

Authors:  Paul Windisch; Carole Koechli; Susanne Rogers; Christina Schröder; Robert Förster; Daniel R Zwahlen; Stephan Bodis
Journal:  Cancers (Basel)       Date:  2022-05-27       Impact factor: 6.575

3.  Research on Classification Model of Panax notoginseng Taproots Based on Machine Vision Feature Fusion.

Authors:  Yinlong Zhu; Fujie Zhang; Lixia Li; Yuhao Lin; Zhongxiong Zhang; Lei Shi; Huan Tao; Tao Qin
Journal:  Sensors (Basel)       Date:  2021-11-28       Impact factor: 3.576

Review 4.  Use of advanced neuroimaging and artificial intelligence in meningiomas.

Authors:  Norbert Galldiks; Frank Angenstein; Jan-Michael Werner; Elena K Bauer; Robin Gutsche; Gereon R Fink; Karl-Josef Langen; Philipp Lohmann
Journal:  Brain Pathol       Date:  2022-03       Impact factor: 6.508

5.  Automatic differentiation of Grade I and II meningiomas on magnetic resonance image using an asymmetric convolutional neural network.

Authors:  April Vassantachart; Yufeng Cao; Michael Gribble; Samuel Guzman; Jason C Ye; Kyle Hurth; Anna Mathew; Gabriel Zada; Zhaoyang Fan; Eric L Chang; Wensha Yang
Journal:  Sci Rep       Date:  2022-03-09       Impact factor: 4.379

Review 6.  Identification and Management of Aggressive Meningiomas.

Authors:  Bhuvic Patel; Rupen Desai; Sangami Pugazenthi; Omar H Butt; Jiayi Huang; Albert H Kim
Journal:  Front Oncol       Date:  2022-03-23       Impact factor: 6.244

7.  Testing the applicability and performance of Auto ML for potential applications in diagnostic neuroradiology.

Authors:  Manfred Musigmann; Burak Han Akkurt; Hermann Krähling; Nabila Gala Nacul; Luca Remonda; Thomas Sartoretti; Dylan Henssen; Benjamin Brokinkel; Walter Stummer; Walter Heindel; Manoj Mannil
Journal:  Sci Rep       Date:  2022-08-11       Impact factor: 4.996

8.  Surface-based morphological patterns associated with neuropsychological performance, symptom severity, and treatment response in Parkinson's disease.

Authors:  Jiajie Mo; Bowen Yang; Xiu Wang; Jianguo Zhang; Wenhan Hu; Chao Zhang; Kai Zhang
Journal:  Ann Transl Med       Date:  2022-07

9.  Deep neural networks allow expert-level brain meningioma segmentation and present potential for improvement of clinical practice.

Authors:  Alessandro Boaro; Jakub R Kaczmarzyk; Vasileios K Kavouridis; Maya Harary; Marco Mammi; Hassan Dawood; Alice Shea; Elise Y Cho; Parikshit Juvekar; Thomas Noh; Aakanksha Rana; Satrajit Ghosh; Omar Arnaout
Journal:  Sci Rep       Date:  2022-09-14       Impact factor: 4.996

  9 in total

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