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Machine learning and radiomics analysis by computed tomography in colorectal liver metastases patients for RAS mutational status prediction
被引:5
|作者:
Granata, Vincenza
[1
]
Fusco, Roberta
[2
]
Setola, Sergio Venanzio
[1
]
Brunese, Maria Chiara
[3
]
Di Mauro, Annabella
[4
]
Avallone, Antonio
[5
]
Ottaiano, Alessandro
[5
]
Normanno, Nicola
[6
]
Petrillo, Antonella
[1
]
Izzo, Francesco
[7
]
机构:
[1] Ist Nazl Tumori IRCCS Fdn Pascale IRCCS Napoli, Div Radiol, Naples, Italy
[2] Igea SpA, Med Oncol Div, Naples, Italy
[3] Univ Molise, Dept Med & Hlth Sci V Tiberio, I-86100 Campobasso, Italy
[4] IRCCS Fdn G Pascale, Ist Nazl Tumori, Pathol Anat & Cytopathol Unit, I-80131 Naples, Italy
[5] IRCCS Fdn G Pascale, Ist Nazl Tumori, Clin Sperimental Abdominal Oncol Unit, I-80131 Naples, Italy
[6] IRCCS Ist Romagnolo Studio Tumori IRST Dino Amador, I-47014 Mendola, Italy
[7] Ist Nazl Tumori IRCCS Fdn Pascale IRCCS Napoli, Div Epatobiliary Surg Oncol, I-80131 Naples, Italy
来源:
关键词:
Radiomic analysis;
Machine learning;
Liver metastases;
Computed tomography;
RAS mutational status;
HETEROGENEITY;
D O I:
10.1007/s11547-024-01828-5
中图分类号:
R8 [特种医学];
R445 [影像诊断学];
学科分类号:
1002 ;
100207 ;
1009 ;
摘要:
Purpose To assess the efficacy of machine learning and radiomics analysis by computed tomography (CT) in presurgical setting, to predict RAS mutational status in colorectal liver metastases. Methods Patient selection in a retrospective study was carried out from January 2018 to May 2021 considering the following inclusion criteria: patients subjected to surgical resection for liver metastases; proven pathological liver metastases; patients subjected to enhanced CT examination in the presurgical setting with a good quality of images; and RAS assessment as standard reference. A total of 851 radiomics features were extracted using the PyRadiomics Python package from the Slicer 3D image computing platform after slice-by-slice segmentation on CT portal phase by two expert radiologists of each individual liver metastasis performed first independently by the individual reader and then in consensus. Balancing technique was performed, and inter- and intraclass correlation coefficients were calculated to assess the between-observer and within-observer reproducibility of features. Receiver operating characteristics (ROC) analysis with the calculation of area under the ROC curve (AUC), sensitivity (SENS), specificity (SPEC), positive predictive value (PPV), negative predictive value (NPV) and accuracy (ACC) were assessed for each parameter. Linear and non-logistic regression model (LRM and NLRM) and different machine learning-based classifiers were considered. Moreover, features selection was performed before and after a normalized procedure using two different methods (3-sigma and z-score). Results Seventy-seven liver metastases in 28 patients with a mean age of 60 years (range 40-80 years) were analyzed. The best predictors, at univariate analysis for both normalized procedures, were original_shape_Maximum2DDiameter and wavelet_HLL_glcm_InverseVariance that reached an accuracy of 80%, an AUC >= 0.75, a sensitivity >= 80% and a specificity >= 70% (p value < < 0.01). However, a multivariate analysis significantly increased the accuracy in RAS prediction when a linear regression model (LRM) was used. The best performance was obtained using a LRM combining linearly 12 robust features after a z-score normalization procedure: AUC of 0.953, accuracy 98%, sensitivity 96%, specificity of 100%, PPV 100% and NPV 96% (p value < < 0.01). No statistically significant increase was obtained considering the tested machine learning both without normalization and with normalization methods. Conclusions Normalized approach in CT radiomics analysis allows to predict RAS mutational status in colorectal liver metastases patients.
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页码:957 / 966
页数:10
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