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Machine-Learning-Based Radiomics for Classifying Glioma Grade from Magnetic Resonance Images of the Brain.
Kumar, Anuj; Jha, Ashish Kumar; Agarwal, Jai Prakash; Yadav, Manender; Badhe, Suvarna; Sahay, Ayushi; Epari, Sridhar; Sahu, Arpita; Bhattacharya, Kajari; Chatterjee, Abhishek; Ganeshan, Balaji; Rangarajan, Venkatesh; Moyiadi, Aliasgar; Gupta, Tejpal; Goda, Jayant S.
Afiliação
  • Kumar A; Department of Radiation Oncology, Tata Memorial Centre, Homi Bhaba National Institute, Mumbai 400012, India.
  • Jha AK; Department of Nuclear Medicine, Tata Memorial Centre, Homi Bhaba National Institute, Mumbai 400012, India.
  • Agarwal JP; Department of Radiation Oncology, Tata Memorial Centre, Homi Bhaba National Institute, Mumbai 400012, India.
  • Yadav M; Department of Radiation Oncology, Tata Memorial Centre, Homi Bhaba National Institute, Mumbai 400012, India.
  • Badhe S; Department of Radiation Oncology, Tata Memorial Centre, Homi Bhaba National Institute, Mumbai 400012, India.
  • Sahay A; Department of Pathology, Tata Memorial Centre, Homi Bhaba National Institute, Mumbai 400012, India.
  • Epari S; Department of Pathology, Tata Memorial Centre, Homi Bhaba National Institute, Mumbai 400012, India.
  • Sahu A; Department of Radiodiagnosis, Tata Memorial Centre, Homi Bhaba National Institute, Mumbai 400012, India.
  • Bhattacharya K; Department of Radiodiagnosis, Tata Memorial Centre, Homi Bhaba National Institute, Mumbai 400012, India.
  • Chatterjee A; Department of Radiation Oncology, Tata Memorial Centre, Homi Bhaba National Institute, Mumbai 400012, India.
  • Ganeshan B; Institute of Nuclear Medicine, University College London Hospital, 235 Euston Road, London NW1 2BU, UK.
  • Rangarajan V; Department of Nuclear Medicine, Tata Memorial Centre, Homi Bhaba National Institute, Mumbai 400012, India.
  • Moyiadi A; Department of Neurosurgery, Tata Memorial Centre, Homi Bhaba National Institute, Mumbai 400012, India.
  • Gupta T; Department of Radiation Oncology, Tata Memorial Centre, Homi Bhaba National Institute, Mumbai 400012, India.
  • Goda JS; Department of Radiation Oncology, Tata Memorial Centre, Homi Bhaba National Institute, Mumbai 400012, India.
J Pers Med ; 13(6)2023 May 30.
Article em En | MEDLINE | ID: mdl-37373909
Grading of gliomas is a piece of critical information related to prognosis and survival. Classifying glioma grade by semantic radiological features is subjective, requires multiple MRI sequences, is quite complex and clinically demanding, and can very often result in erroneous radiological diagnosis. We used a radiomics approach with machine learning classifiers to determine the grade of gliomas. Eighty-three patients with histopathologically proven gliomas underwent MRI of the brain. Whenever available, immunohistochemistry was additionally used to augment the histopathological diagnosis. Segmentation was performed manually on the T2W MR sequence using the TexRad texture analysis softwareTM, Version 3.10. Forty-two radiomics features, which included first-order features and shape features, were derived and compared between high-grade and low-grade gliomas. Features were selected by recursive feature elimination using a random forest algorithm method. The classification performance of the models was measured using accuracy, precision, recall, f1 score, and area under the curve (AUC) of the receiver operating characteristic curve. A 10-fold cross-validation was adopted to separate the training and the test data. The selected features were used to build five classifier models: support vector machine, random forest, gradient boost, naive Bayes, and AdaBoost classifiers. The random forest model performed the best, achieving an AUC of 0.81, an accuracy of 0.83, f1 score of 0.88, a recall of 0.93, and a precision of 0.85 for the test cohort. The results suggest that machine-learning-based radiomics features extracted from multiparametric MRI images can provide a non-invasive method for predicting glioma grades preoperatively. In the present study, we extracted the radiomics features from a single cross-sectional image of the T2W MRI sequence and utilized these features to build a fairly robust model to classify low-grade gliomas from high-grade gliomas (grade 4 gliomas).
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Texto completo: 1 Base de dados: MEDLINE Tipo de estudo: Prognostic_studies Idioma: En Ano de publicação: 2023 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Tipo de estudo: Prognostic_studies Idioma: En Ano de publicação: 2023 Tipo de documento: Article