Quantitative Imaging Decision Support (Qids(Tm)) Tool Consistency Evaluation And Radiomic Analysis By Means Of 594 Metrics In Lung Carcinoma On Chest Ct Scan

CANCER CONTROL(2021)

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摘要
Objective:To evaluate the consistency of the quantitative imaging decision support (QIDS(TM)) tool and radiomic analysis using 594 metrics in lung carcinoma on chest CT scan.Materials and Methods:We included, retrospectively, 150 patients with histologically confirmed lung cancer who underwent chemotherapy and baseline and follow-ups CT scans. Using the QIDS(TM) platform, 3 radiologists segmented each lesion and automatically collected the longest diameter and the density mean value. Inter-observer variability, Bland Altman analysis and Spearman's correlation coefficient were performed. QIDS(TM) tool consistency was assessed in terms of agreement rate in the treatment response classification. Kruskal Wallis test and the least absolute shrinkage and selection operator (LASSO) method with 10-fold cross validation were used to identify radiomic metrics correlated with lesion size change.Results:Good and significant correlation was obtained between the measurements of largest diameter and of density among the QIDS(TM) tool and the radiologists measurements. Inter-observer variability values were over 0.85. HealthMyne QIDS(TM) tool quantitative volumetric delineation was consistent and matched with each radiologist measurement considering the RECIST classification (80-84%) while a lower concordance among QIDS(TM) and the radiologists CHOI classification was observed (58-63%). Among 594 extracted metrics, significant and robust predictors of RECIST response were energy, histogram entropy and uniformity, Kurtosis, coronal long axis, longest planar diameter, surface, Neighborhood Grey-Level Different Matrix (NGLDM) dependence nonuniformity and low dependence emphasis as Volume, entropy of Log(2.5 mm), wavelet energy, deviation and root man squared.Conclusion:In conclusion, we demonstrated that HealthMyne quantitative volumetric delineation was consistent and that several radiomic metrics extracted by QIDS(TM) were significant and robust predictors of RECIST response.
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关键词
chest CT, pulmonary carcinoma, segmentation, RECIST, CHOI, radiomic
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