Literature DB >> 29721515

Combination of computer extracted shape and texture features enables discrimination of granulomas from adenocarcinoma on chest computed tomography.

Mahdi Orooji1, Mehdi Alilou1, Sagar Rakshit2, Niha Beig1, Mohammad Hadi Khorrami1, Prabhakar Rajiah3, Rajat Thawani1, Jennifer Ginsberg4, Christopher Donatelli5, Michael Yang6, Frank Jacono5, Robert Gilkeson7, Vamsidhar Velcheti8, Philip Linden4, Anant Madabhushi1.   

Abstract

Differentiation between benign and malignant nodules is a problem encountered by radiologists when visualizing computed tomography (CT) scans. Adenocarcinomas and granulomas have a characteristic spiculated appearance and may be fluorodeoxyglucose avid, making them difficult to distinguish for human readers. In this retrospective study, we aimed to evaluate whether a combination of radiomic texture and shape features from noncontrast CT scans can enable discrimination between granulomas and adenocarcinomas. Our study is composed of CT scans of 195 patients from two institutions, one cohort for training ([Formula: see text]) and the other ([Formula: see text]) for independent validation. A set of 645 three-dimensional texture and 24 shape features were extracted from CT scans in the training cohort. Feature selection was employed to identify the most informative features using this set. The top ranked features were also assessed in terms of their stability and reproducibility across the training and testing cohorts and between scans of different slice thickness. Three different classifiers were constructed using the top ranked features identified from the training set. These classifiers were then validated on the test set and the best classifier (support vector machine) yielded an area under the receiver operating characteristic curve of 77.8%.

Entities:  

Keywords:  artificial intelligence; computed tomography scan; computer-assisted diagnosis; lung cancer; phenotype

Year:  2018        PMID: 29721515      PMCID: PMC5904542          DOI: 10.1117/1.JMI.5.2.024501

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


  26 in total

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Journal:  Tumour Biol       Date:  2014-05-26

Review 5.  The solitary pulmonary nodule.

Authors:  Helen T Winer-Muram
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6.  Role of quantitative computed tomography texture analysis in the differentiation of primary lung cancer and granulomatous nodules.

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8.  Effects of contrast-enhancement, reconstruction slice thickness and convolution kernel on the diagnostic performance of radiomics signature in solitary pulmonary nodule.

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9.  Impact of Reconstruction Algorithms on CT Radiomic Features of Pulmonary Tumors: Analysis of Intra- and Inter-Reader Variability and Inter-Reconstruction Algorithm Variability.

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10.  Variability of Image Features Computed from Conventional and Respiratory-Gated PET/CT Images of Lung Cancer.

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Journal:  Transl Oncol       Date:  2015-12       Impact factor: 4.243

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3.  Combination of Peri- and Intratumoral Radiomic Features on Baseline CT Scans Predicts Response to Chemotherapy in Lung Adenocarcinoma.

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Review 4.  A Survey of Dental Caries Segmentation and Detection Techniques.

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5.  Distinguishing granulomas from adenocarcinomas by integrating stable and discriminating radiomic features on non-contrast computed tomography scans.

Authors:  Mohammadhadi Khorrami; Kaustav Bera; Rajat Thawani; Prabhakar Rajiah; Amit Gupta; Pingfu Fu; Philip Linden; Nathan Pennell; Frank Jacono; Robert C Gilkeson; Vamsidhar Velcheti; Anant Madabhushi
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6.  Towards clinical application of image mining: a systematic review on artificial intelligence and radiomics.

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8.  Comparison of Radiomic Models Based on Low-Dose and Standard-Dose CT for Prediction of Adenocarcinomas and Benign Lesions in Solid Pulmonary Nodules.

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