Radiomics and machine learning analysis based on magnetic resonance imaging in the assessment of liver mucinous colorectal metastases

Purpose The purpose of this study is to evaluate the Radiomics and Machine Learning Analysis based on MRI in the assessment of Liver Mucinous Colorectal Metastases.Query Methods The cohort of patients included a training set (121 cases) and an external validation set (30 cases) with colorectal liver...

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Veröffentlicht in:Radiologia medica 2022-07, Vol.127 (7), p.763-772
Hauptverfasser: Granata, Vincenza, Fusco, Roberta, De Muzio, Federica, Cutolo, Carmen, Setola, Sergio Venanzio, Dell’Aversana, Federica, Grassi, Francesca, Belli, Andrea, Silvestro, Lucrezia, Ottaiano, Alessandro, Nasti, Guglielmo, Avallone, Antonio, Flammia, Federica, Miele, Vittorio, Tatangelo, Fabiana, Izzo, Francesco, Petrillo, Antonella
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Sprache:eng
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Zusammenfassung:Purpose The purpose of this study is to evaluate the Radiomics and Machine Learning Analysis based on MRI in the assessment of Liver Mucinous Colorectal Metastases.Query Methods The cohort of patients included a training set (121 cases) and an external validation set (30 cases) with colorectal liver metastases with pathological proof and MRI study enrolled in this approved study retrospectively. About 851 radiomics features were extracted as median values by means of the PyRadiomics tool on volume on interest segmented manually by two expert radiologists. Univariate analysis, linear regression modelling and pattern recognition methods were used as statistical and classification procedures. Results The best results at univariate analysis were reached by the wavelet_LLH_glcm_JointEntropy extracted by T2W SPACE sequence with accuracy of 92%. Linear regression model increased the performance obtained respect to the univariate analysis. The best results were obtained by a linear regression model of 15 significant features extracted by the T2W SPACE sequence with accuracy of 94%, a sensitivity of 92% and a specificity of 95%. The best classifier among the tested pattern recognition approaches was k-nearest neighbours (KNN); however, KNN achieved lower precision than the best linear regression model. Conclusions Radiomics metrics allow the mucinous subtype lesion characterization, in order to obtain a more personalized approach. We demonstrated that the best performance was obtained by T2-W extracted textural metrics.
ISSN:1826-6983
0033-8362
1826-6983
DOI:10.1007/s11547-022-01501-9