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      KCI등재 SCI SCIE SCOPUS

      Prediction of Microsatellite Instability in Colorectal Cancer Using a Machine Learning Model Based on PET/CT Radiomics

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      https://www.riss.kr/link?id=A108565243

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      Purpose: We investigated the feasibility of preoperative 18F-fluorodeoxyglucose (FDG) positron emission tomography (PET)/computed tomography (CT) radiomics with machine learning to predict microsatellite instability (MSI) status in colorectal can cer (CRC) patients.
      Materials and Methods: Altogether, 233 patients with CRC who underwent preoperative FDG PET/CT were enrolled and divided into training (n=139) and test (n=94) sets. A PET-based radiomics signature (rad_score) was established to predict the MSI status in patients with CRC. The predictive ability of the rad_score was evaluated using the area under the receiver operating character istic curve (AUROC) in the test set. A logistic regression model was used to determine whether the rad_score was an independent predictor of MSI status in CRC. The predictive performance of rad_score was compared with conventional PET parameters.
      Results: The incidence of MSI-high was 15 (10.8%) and 10 (10.6%) in the training and test sets, respectively. The rad_score was constructed based on the two radiomic features and showed similar AUROC values for predicting MSI status in the training and test sets (0.815 and 0.867, respectively; p=0.490). Logistic regression analysis revealed that the rad_score was an independent pre dictor of MSI status in the training set. The rad_score performed better than metabolic tumor volume when assessed using the AUROC (0.867 vs. 0.794, p=0.015).
      Conclusion: Our predictive model incorporating PET radiomic features successfully identified the MSI status of CRC, and it also showed better performance than the conventional PET image parameters.
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      Purpose: We investigated the feasibility of preoperative 18F-fluorodeoxyglucose (FDG) positron emission tomography (PET)/computed tomography (CT) radiomics with machine learning to predict microsatellite instability (MSI) status in colorectal can cer ...

      Purpose: We investigated the feasibility of preoperative 18F-fluorodeoxyglucose (FDG) positron emission tomography (PET)/computed tomography (CT) radiomics with machine learning to predict microsatellite instability (MSI) status in colorectal can cer (CRC) patients.
      Materials and Methods: Altogether, 233 patients with CRC who underwent preoperative FDG PET/CT were enrolled and divided into training (n=139) and test (n=94) sets. A PET-based radiomics signature (rad_score) was established to predict the MSI status in patients with CRC. The predictive ability of the rad_score was evaluated using the area under the receiver operating character istic curve (AUROC) in the test set. A logistic regression model was used to determine whether the rad_score was an independent predictor of MSI status in CRC. The predictive performance of rad_score was compared with conventional PET parameters.
      Results: The incidence of MSI-high was 15 (10.8%) and 10 (10.6%) in the training and test sets, respectively. The rad_score was constructed based on the two radiomic features and showed similar AUROC values for predicting MSI status in the training and test sets (0.815 and 0.867, respectively; p=0.490). Logistic regression analysis revealed that the rad_score was an independent pre dictor of MSI status in the training set. The rad_score performed better than metabolic tumor volume when assessed using the AUROC (0.867 vs. 0.794, p=0.015).
      Conclusion: Our predictive model incorporating PET radiomic features successfully identified the MSI status of CRC, and it also showed better performance than the conventional PET image parameters.

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      참고문헌 (Reference)

      1 Zhang J, "Value of pre-therapy 18F-FDG PET/CT radiomics in predicting EGFR mutation status in patients with non-small cell lung cancer" 47 : 1137-1146, 2020

      2 Ribic CM, "Tumor microsatellite-instability status as a predictor of benefit from fluorouracil-based adjuvant chemotherapy for colon cancer" 349 : 247-257, 2003

      3 Ma J, "The value of 18FFDG PET/CT-based radiomics in predicting perineural invasion and outcome in non-metastatic colorectal cancer" 47 : 1244-1254, 2022

      4 Jover R, "The efficacy of adjuvant chemotherapy with 5-fluorouracil in colorectal cancer depends on the mismatch repair status" 45 : 365-373, 2009

      5 Leijenaar RT, "The effect of SUV discretization in quantitative FDG-PET radiomics : the need for standardized methodology in tumor texture analysis" 5 : 11075-, 2015

      6 Kawada K, "Relationship between 18F-FDG PET/CT scans and KRAS mutations in metastatic colorectal cancer" 56 : 1322-1327, 2015

      7 Golia Pernicka JS, "Radiomics-based prediction of microsatellite instability in colorectal cancer at initial computed tomography evaluation" 44 : 3755-3763, 2019

      8 이정원 ; 이상미, "Radiomics in Oncological PET/CT: Clinical Applications" 대한핵의학회 52 (52): 170-189, 2018

      9 Kang J, "Radiomics features of 18F-fluorodeoxyglucose positron-emission tomography as a novel prognostic signature in colorectal cancer" 13 : 392-, 2021

      10 Li Y, "Radiomics analysis of [18F]FDG PET/CT for microvascular invasion and prognosis prediction in very-early-and early-stage hepatocellular carcinoma" 48 : 2599-2614, 2021

      1 Zhang J, "Value of pre-therapy 18F-FDG PET/CT radiomics in predicting EGFR mutation status in patients with non-small cell lung cancer" 47 : 1137-1146, 2020

      2 Ribic CM, "Tumor microsatellite-instability status as a predictor of benefit from fluorouracil-based adjuvant chemotherapy for colon cancer" 349 : 247-257, 2003

      3 Ma J, "The value of 18FFDG PET/CT-based radiomics in predicting perineural invasion and outcome in non-metastatic colorectal cancer" 47 : 1244-1254, 2022

      4 Jover R, "The efficacy of adjuvant chemotherapy with 5-fluorouracil in colorectal cancer depends on the mismatch repair status" 45 : 365-373, 2009

      5 Leijenaar RT, "The effect of SUV discretization in quantitative FDG-PET radiomics : the need for standardized methodology in tumor texture analysis" 5 : 11075-, 2015

      6 Kawada K, "Relationship between 18F-FDG PET/CT scans and KRAS mutations in metastatic colorectal cancer" 56 : 1322-1327, 2015

      7 Golia Pernicka JS, "Radiomics-based prediction of microsatellite instability in colorectal cancer at initial computed tomography evaluation" 44 : 3755-3763, 2019

      8 이정원 ; 이상미, "Radiomics in Oncological PET/CT: Clinical Applications" 대한핵의학회 52 (52): 170-189, 2018

      9 Kang J, "Radiomics features of 18F-fluorodeoxyglucose positron-emission tomography as a novel prognostic signature in colorectal cancer" 13 : 392-, 2021

      10 Li Y, "Radiomics analysis of [18F]FDG PET/CT for microvascular invasion and prognosis prediction in very-early-and early-stage hepatocellular carcinoma" 48 : 2599-2614, 2021

      11 Jiang Y, "Radiomic signature of 18F fluorodeoxyglucose PET/CT for prediction of gastric cancer survival and chemotherapeutic benefits" 8 : 5915-5928, 2018

      12 Li J, "Quantitative prediction of microsatellite instability in colorectal cancer with preoperative PET/CT-based radiomics" 11 : 702055-, 2021

      13 Hotta M, "Prognostic value of 18F-FDG PET/CT with texture analysis in patients with rectal cancer treated by surgery" 35 : 843-852, 2021

      14 Liao H, "Preoperative radiomic approach to evaluate tumor-infiltrating CD8+ T cells in hepatocellular carcinoma patients using contrast-enhanced computed tomography" 26 : 4537-4547, 2019

      15 He J, "Preoperative prediction of regional lymph node metastasis of colorectal cancer based on 18F-FDG PET/CT and machine learning" 35 : 617-627, 2021

      16 Liu H, "Predictive value of metabolic parameters derived from 18F-FDG PET/CT for microsatellite instability in patients with colorectal carcinoma" 12 : 724464-, 2021

      17 Watanabe T, "Molecular predictors of survival after adjuvant chemotherapy for colon cancer" 344 : 1196-1206, 2001

      18 Chen W, "Molecular genetics of microsatellite-unstable colorectal cancer for pathologists" 12 : 24-, 2017

      19 Kawakami H, "Microsatellite instability testing and its role in the management of colorectal cancer" 16 : 30-, 2015

      20 Nojadeh JN, "Microsatellite instability in colorectal cancer" 17 : 159-168, 2018

      21 Boland CR, "Microsatellite instability in colorectal cancer" 138 : 2073-2087, 2010

      22 Chen SW, "Metabolic imaging phenotype using radiomics of [18F]FDG PET/CT associated with genetic alterations of colorectal cancer" 21 : 183-190, 2019

      23 Nioche C, "LIFEx : a freeware for radiomic feature calculation in multimodality imaging to accelerate advances in the characterization of tumor heterogeneity" 78 : 4786-4789, 2018

      24 Zwanenburg A, "Image biomarker standardisation initiative"

      25 Bray F, "Global cancer statistics 2018 : GLOBOCAN estimates of incidence and mortality worldwide for 36 cancers in 185 countries" 68 : 394-424, 2018

      26 Chung HW, "Gastric cancers with microsatellite instability exhibit high fluorodeoxyglucose uptake on positron emission tomography" 16 : 185-192, 2013

      27 Lemery S, "First FDA approval agnostic of cancer site-when a biomarker defines the indication" 377 : 1409-1412, 2017

      28 Lee SH, "Feasibility of deep learning-based fully automated classification of microsatellite instability in tissue slides of colorectal cancer" 149 : 728-740, 2021

      29 Yamashita R, "Deep learning model for the prediction of microsatellite instability in colorectal cancer : a diagnostic study" 22 : 132-141, 2021

      30 Kather JN, "Deep learning can predict microsatellite instability directly from histology in gastrointestinal cancer" 25 : 1054-1056, 2019

      31 Aerts HJ, "Decoding tumour phenotype by noninvasive imaging using a quantitative radiomics approach" 5 : 4006-, 2014

      32 임형준 ; Tyler Bradshaw ; Meiyappan Solaiyappan ; Steve Y. Cho, "Current Methods to Define Metabolic Tumor Volume in Positron Emission Tomography: Which One is Better?" 대한핵의학회 52 (52): 5-15, 2018

      33 Nagarajah J, "Correlation of BRAFV600E mutation and glucose metabolism in thyroid cancer patients : an 18F-FDG PET study" 56 : 662-667, 2015

      34 Fan S, "Computed tomography-based radiomic features could potentially predict microsatellite instability status in stage II colorectal cancer : a preliminary study" 26 : 1633-1640, 2019

      35 van Griethuysen JJM, "Computational radiomics system to decode the radiographic phenotype" 77 : e104-e107, 2017

      36 Echle A, "Clinical-grade detection of microsatellite instability in colorectal tumors by deep learning" 159 : 1406-1416, 2020

      37 강정현 ; 이강영 ; 이학우 ; 김임경 ; 김남규 ; 손승국, "Clinical Implications of Microsatellite Instability in T1 Colorectal Cancer" 연세대학교의과대학 56 (56): 175-181, 2015

      38 Hildebrand LA, "Artificial intelligence for histology-based detection of microsatellite instability and prediction of response to immunotherapy in colorectal cancer" 13 : 391-, 2021

      39 Jun S, "Accurate FDG PET tumor segmentation using the peritumoral halo layer method : a study in patients with esophageal squamous cell carcinoma" 18 : 35-, 2018

      40 Cook GJR, "A role for FDG PET radiomics in personalized medicine?" 50 : 532-540, 2020

      41 Chang C, "A machine learning model based on PET/CT radiomics and clinical characteristics predicts ALK rearrangement status in lung adenocarcinoma" 11 : 603882-, 2021

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