A CT Radiomics Analysis of the Adrenal Masses: Can We Discriminate Lipid-poor Adenomas from the Pheochromocytoma and Malignant Masses?

被引:5
|
作者
Mendi, Bokebatur Ahmet Rasit [1 ]
Gulbay, Mutlu [2 ]
机构
[1] Nigde Omer Halisdemir Univ, Dept Radiol, Training & Res Hosp, Nigde, Turkiye
[2] Univ Mahallesi, Ankara City Hosp, Dept Radiol, Ankara, Turkiye
关键词
Radiomics; adrenal; computed tomography; texture analysis; logit fit; random forest; COMPUTED-TOMOGRAPHY; TUMORS;
D O I
10.2174/1573405619666221115124352
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
Aims: The aim of the study is to demonstrate a non-invasive alternative method to aid the decision making process in the management of adrenal masses. Background: Lipid-poor adenomas constitute 30% of all adrenal adenomas. When discovered incidentally, additional dynamic adrenal examinations are required to differentiate them from an adrenal malignancy or pheochromocytoma. Objective: In this retrospective study, we aimed to discriminate lipid-poor adenomas from other lipid-poor adrenal masses by using radiomics analysis in single contrast phase CT scans. Materials and Methods: A total of 38 histologically proven lipid-poor adenomas (Group 1) and 38 cases of pheochromocytoma or malignant adrenal mass (Group 2) were included in this retrospective study. Lesions were segmented volumetrically by two independent authors, and a total of 63 sizes, shapes, and first- and second-order parameters were calculated. Among these parameters, a logit-fit model was produced by using 6 parameters selected by the LASSO (least absolute shrinkage and selection operator) regression. The model was cross-validated with LOOCV (leave-one-out cross-validation) and 1000-bootstrap sampling. A random forest model was also generated in order to use all parameters without the risk of multicollinearity. This model was examined with the nested cross-validation method. Results: Sensitivity, specificity, accuracy and AUC were calculated in test sets as 84.2%, 81.6%, 82.9% and 0.829 in the logit fit model and 91%, 80%, 82.8% and 0.975 in the RF model, respectively. Conclusion: Predictive models based on radiomics analysis using single-phase contrast-enhanced CT can help characterize adrenal lesions.
引用
收藏
页码:1018 / 1030
页数:13
相关论文
共 50 条
  • [31] Delayed enhanced CT for differentiation of benign from malignant adrenal masses
    Korobkin, M
    Brodeur, FJ
    Francis, IR
    Quint, LE
    Dunnick, NR
    Goodsitt, M
    RADIOLOGY, 1996, 200 (03) : 737 - 742
  • [32] Characterization of Adrenal Masses: Can Dual Energy CT Improve Differentiation Between Adenomas and Metastases?
    Gupta, R.
    Ho, L.
    Marin, D.
    Boll, D.
    Nelson, R.
    AMERICAN JOURNAL OF ROENTGENOLOGY, 2009, 192 (05)
  • [33] High Diagnostic Accuracy of Arterial Phase CT in Differentiating Pheochromocytoma in Good/Poor Washout Adrenal Masses
    Phadte, Aditya
    Krishnappa, Brijesh
    Memon, Saba Samad
    Patil, Virendra
    Lila, Anurag
    Badhe, Padma Vikram
    Sarathi, Vijaya
    Fernandes, Gwendolyn
    Rege, Sameer
    Prakash, Gagan
    Menon, Santosh
    Karlekar, Manjiri
    Barnabas, Rohit
    Shah, Nalini
    Thakkar, Hemangini
    Bandgar, Tushar
    JOURNAL OF THE ENDOCRINE SOCIETY, 2024, 9 (01)
  • [34] Computed tomographic histogram analysis in the diagnosis of lipid-poor adenomas: Comparison to adrenal washout computed tomography
    Jhaveri, Kartik S.
    Lad, Shilpa V.
    Haider, Masoom A.
    JOURNAL OF COMPUTER ASSISTED TOMOGRAPHY, 2007, 31 (04) : 513 - 518
  • [35] Computed Tomography-Based Machine Learning Differentiates Adrenal Pheochromocytoma From Lipid-Poor Adenoma
    Liu, Haipeng
    Guan, Xiao
    Xu, Beibei
    Zeng, Feiyue
    Chen, Changyong
    Yin, Hong Ling
    Yi, Xiaoping
    Peng, Yousong
    Chen, Bihong T.
    FRONTIERS IN ENDOCRINOLOGY, 2022, 13
  • [36] Radiomics analysis of ultrasound images to discriminate between benign and malignant adnexal masses with solid morphology on ultrasound
    Moro, F.
    Vagni, M.
    Tran, H. E.
    Bernardini, F.
    Mascilini, F.
    Ciccarone, F.
    Nero, C.
    Giannarelli, D.
    Boldrini, L.
    Fagotti, A.
    Scambia, G.
    Valentin, L.
    Testa, A. C.
    ULTRASOUND IN OBSTETRICS & GYNECOLOGY, 2025, 65 (03) : 353 - 363
  • [37] Adrenal incidentaloma: machine learning-based quantitative texture analysis of unenhanced CT can effectively differentiate sPHEO from lipid-poor adrenal adenoma
    Yi, Xiaoping
    Guan, Xiao
    Chen, Chen
    Zhang, Youming
    Zhang, Zhe
    Li, Minghao
    Liu, Peihua
    Yu, Anze
    Long, Xueying
    Liu, Longfei
    Chen, Bihong T.
    Zee, Chishing
    JOURNAL OF CANCER, 2018, 9 (19): : 3577 - 3582
  • [38] Deep learning based classification of solid lipid-poor contrast enhancing renal masses using contrast enhanced CT
    Oberai, Assad
    Varghese, Bino
    Cen, Steven
    Angelini, Tomas
    Hwang, Darryl
    Gill, Inderbir
    Aron, Manju
    Lau, Christopher
    Duddalwar, Vinay
    BRITISH JOURNAL OF RADIOLOGY, 2020, 93 (1111):
  • [39] Distinguishing metastases from benign adrenal masses: what can CT texture analysis do?
    Shi, Bing
    Zhang, Gu-Mu-Yang
    Xu, Min
    Jin, Zheng-Yu
    Sun, Hao
    ACTA RADIOLOGICA, 2019, 60 (11) : 1553 - 1561
  • [40] FDG-PET/CT and FLT-PET/CT for differentiating between lipid-poor benign and malignant adrenal tumours
    Nakajo, Masatoyo
    Jinguji, Megumi
    Fukukura, Yoshihiko
    Kajiya, Yoriko
    Tani, Atushi
    Nakajo, Masayuki
    Nakabeppu, Yoshiaki
    Arimura, Hiroshi
    Nishio, Yoshihiko
    Nakamura, Fumihiko
    Yoshiura, Takashi
    EUROPEAN RADIOLOGY, 2015, 25 (12) : 3696 - 3705