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Differentiating mass-like tuberculosis from lung cancer based on radiomics and CT features

Shuhua Wei, Bin Shi, Jinmei Zhang, Naiyu Li

2021Translational Cancer Research26 citationsDOIOpen Access PDF

Abstract

BACKGROUND: The number of TB subtypes with irregular masses are increasing year by year, which can easily be confused with lung cancer. This study aimed to explore the value of CT radiomics analysis in differentiating mass-like tuberculosis (TB) from peripheral lung cancer. METHODS: -test, Mann-Whitney test, Pearson chi-square test, or Fisher's exact test. Logistic regression was used to establish a texture feature model, a morphology model and a combined prediction model. The models' diagnostic efficacy was evaluated using receiver operating characteristic (ROC) curves. RESULTS: The comparative analysis between the two groups revealed significant differences in 7 texture parameters (kurtosis, median, skewness, gray-level co-occurrence matrix, gray-level length matrix, gray-level area size matrix, and regional percentage), 4 quantitative parameters [plain scan CT value, arterial phase (AP) CT value, venous phase (VP) CT value, and the difference in CT value between the VP and plain scan], and 8 qualitative CT manifestations (lobular sign, long burr sign, exudation, pleura, necrosis, trachea, vessels, calcifications, and satellite lesions) (P<0.05); logistic regression analysis revealed the area under the ROC curve values of the texture feature, morphology, and combined prediction models to be 0.856, 0.950, and 0.982, respectively (P<0.05). CONCLUSIONS: Combining morphological and radiomics models can effectively and noninvasively improve the efficiency of differentiating mass-like TB from peripheral lung cancer, which is conducive to selecting the appropriate therapy.

Topics & Concepts

MedicineLung cancerReceiver operating characteristicMann–Whitney U testLogistic regressionRadiologyWilcoxon signed-rank testTuberculosisNuclear medicinePathologyInternal medicineRadiomics and Machine Learning in Medical ImagingLung Cancer Diagnosis and TreatmentAdvanced X-ray and CT Imaging