Browsing by Author "Sljukic, Vladimir (19934460700)"
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Publication Encapsulated omental necrosis as an unexpected postoperative finding: A case report(2021) ;Mitrovic, Milica (56257450700) ;Velickovic, Dejan (14072144000) ;Micev, Marjan (7003864533) ;Sljukic, Vladimir (19934460700) ;Djuric, Petar (56979881000) ;Tadic, Boris (57210134550) ;Skrobic, Ognjan (16234762800)Djokic Kovac, Jelena (52563972900)Postsurgical fat necrosis is a frequent finding in abdominal cross-sectional imaging. Epiploic appendagitis and omental infarction are a result of torsion or vascular occlusion. Surgery or pancreatitis are conditions that can have a traumatic and ischemic effect on fatty tissue. The imaging appearances may raise concerns for recurrent malignancy, but percutaneous biopsy and di-agnostic follow-up assist in the accurate diagnosis of omental infarction. Herein we describe a case of encapsulated omental necrosis temporally related to gastric surgery. Preoperative CT and MRI findings showed the characteristics of encapsulated, postcontrast nonviable tumefaction in the epi-gastrium without clear imaging features of malignancy. Due to the size of the lesion and the pa-tient’s primary disease, tumor recurrence could not be completely ruled out, and the patient under-went surgery. Histopathological analysis confirmed the diagnosis of steatonecrosis of the omentum. © 2021 by the authors. Li-censee MDPI, Basel, Switzerland. - Some of the metrics are blocked by yourconsent settings
Publication Possibility of Using Conventional Computed Tomography Features and Histogram Texture Analysis Parameters as Imaging Biomarkers for Preoperative Prediction of High-Risk Gastrointestinal Stromal Tumors of the Stomach(2023) ;Jovanovic, Milica Mitrovic (57221998001) ;Stefanovic, Aleksandra Djuric (59026442300) ;Sarac, Dimitrije (58130988100) ;Kovac, Jelena (52563972900) ;Jankovic, Aleksandra (57205752179) ;Saponjski, Dusan J. (57193090494) ;Tadic, Boris (57210134550) ;Kostadinovic, Milena (57205204516) ;Veselinovic, Milan (55376277300) ;Sljukic, Vladimir (19934460700) ;Skrobic, Ognjan (16234762800) ;Micev, Marjan (7003864533) ;Masulovic, Dragan (57215645003) ;Pesko, Predrag (7004246956)Ebrahimi, Keramatollah (24466474300)Background: The objective of this study is to determine the morphological computed tomography features of the tumor and texture analysis parameters, which may be a useful diagnostic tool for the preoperative prediction of high-risk gastrointestinal stromal tumors (HR GISTs). Methods: This is a prospective cohort study that was carried out in the period from 2019 to 2022. The study included 79 patients who underwent CT examination, texture analysis, surgical resection of a lesion that was suspicious for GIST as well as pathohistological and immunohistochemical analysis. Results: Textural analysis pointed out min norm (p = 0.032) as a histogram parameter that significantly differed between HR and LR GISTs, while min norm (p = 0.007), skewness (p = 0.035) and kurtosis (p = 0.003) showed significant differences between high-grade and low-grade tumors. Univariate regression analysis identified tumor diameter, margin appearance, growth pattern, lesion shape, structure, mucosal continuity, enlarged peri- and intra-tumoral feeding or draining vessel (EFDV) and max norm as significant predictive factors for HR GISTs. Interrupted mucosa (p < 0.001) and presence of EFDV (p < 0.001) were obtained by multivariate regression analysis as independent predictive factors of high-risk GISTs with an AUC of 0.878 (CI: 0.797–0.959), sensitivity of 94%, specificity of 77% and accuracy of 88%. Conclusion: This result shows that morphological CT features of GIST are of great importance in the prediction of non-invasive preoperative metastatic risk. The incorporation of texture analysis into basic imaging protocols may further improve the preoperative assessment of risk stratification. © 2023 by the authors. - Some of the metrics are blocked by yourconsent settings
Publication Possibility of Using Conventional Computed Tomography Features and Histogram Texture Analysis Parameters as Imaging Biomarkers for Preoperative Prediction of High-Risk Gastrointestinal Stromal Tumors of the Stomach(2023) ;Jovanovic, Milica Mitrovic (57221998001) ;Stefanovic, Aleksandra Djuric (59026442300) ;Sarac, Dimitrije (58130988100) ;Kovac, Jelena (52563972900) ;Jankovic, Aleksandra (57205752179) ;Saponjski, Dusan J. (57193090494) ;Tadic, Boris (57210134550) ;Kostadinovic, Milena (57205204516) ;Veselinovic, Milan (55376277300) ;Sljukic, Vladimir (19934460700) ;Skrobic, Ognjan (16234762800) ;Micev, Marjan (7003864533) ;Masulovic, Dragan (57215645003) ;Pesko, Predrag (7004246956)Ebrahimi, Keramatollah (24466474300)Background: The objective of this study is to determine the morphological computed tomography features of the tumor and texture analysis parameters, which may be a useful diagnostic tool for the preoperative prediction of high-risk gastrointestinal stromal tumors (HR GISTs). Methods: This is a prospective cohort study that was carried out in the period from 2019 to 2022. The study included 79 patients who underwent CT examination, texture analysis, surgical resection of a lesion that was suspicious for GIST as well as pathohistological and immunohistochemical analysis. Results: Textural analysis pointed out min norm (p = 0.032) as a histogram parameter that significantly differed between HR and LR GISTs, while min norm (p = 0.007), skewness (p = 0.035) and kurtosis (p = 0.003) showed significant differences between high-grade and low-grade tumors. Univariate regression analysis identified tumor diameter, margin appearance, growth pattern, lesion shape, structure, mucosal continuity, enlarged peri- and intra-tumoral feeding or draining vessel (EFDV) and max norm as significant predictive factors for HR GISTs. Interrupted mucosa (p < 0.001) and presence of EFDV (p < 0.001) were obtained by multivariate regression analysis as independent predictive factors of high-risk GISTs with an AUC of 0.878 (CI: 0.797–0.959), sensitivity of 94%, specificity of 77% and accuracy of 88%. Conclusion: This result shows that morphological CT features of GIST are of great importance in the prediction of non-invasive preoperative metastatic risk. The incorporation of texture analysis into basic imaging protocols may further improve the preoperative assessment of risk stratification. © 2023 by the authors.
