Radiomics in the CT diagnosis of ovarian cystic malignancies - a pilot study.

Q2 Medicine
Medicine and Pharmacy Reports Pub Date : 2024-04-01 Epub Date: 2024-04-25 DOI:10.15386/mpr-2594
Lucian Mărginean, Paul-Andrei Ştefan, Rareş Cristian Filep, Csaba Csutak, Andrei Lebovici, Diana Gherman, Roxana-Adelina Lupean, Bogdan Andrei Suciu
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引用次数: 0

Abstract

Background and aims: The conventional computed tomography (CT) appearance of ovarian cystic masses is often insufficient to adequately differentiate between benign and malignant entities. This study aims to investigate whether texture analysis of the fluid component can augment the CT diagnosis of ovarian cystic tumors.

Methods: Eighty-four patients with adnexal cystic lesions who underwent CT examinations were retrospectively included. All patients had a final diagnosis that was established by histological analysis in forty four cases. The texture features of the lesions content were extracted using dedicated software and further used for comparing benign and malignant lesions, primary tumors and metastases, malignant and borderline lesions, and benign and borderline lesions. Texture features' discriminatory ability was evaluated through univariate and receiver operating characteristics analysis and also by the use of the k-nearest-neighbor classifier.

Results: The univariate analysis showed statistically significant results when comparing benign and malignant lesions (the Difference Variance parameter, p=0.0074) and malignant and borderline tumors (the Correlation parameter, p=0.488). The highest accuracy (83.33%) was achieved by the classifier when discriminating primary tumors from ovarian metastases.

Conclusion: Texture parameters were able to successfully discriminate between different types of ovarian cystic lesions based on their content, but it is not entirely clear whether these differences are a result of the physical properties of the fluids or their appartenance to a particular histopathological group. If further validated, radiomics can offer a rapid and non-invasive alternative in the diagnosis of ovarian cystic tumors.

放射组学在卵巢囊性恶性肿瘤CT诊断中的初步研究
背景和目的。卵巢囊性肿块的常规计算机断层扫描(CT)表现往往不足以充分区分其良恶性。本研究旨在探讨液体成分的质地分析是否可以增强卵巢囊性肿瘤的CT诊断。方法。回顾性分析84例经CT检查的附件囊性病变患者。44例患者均通过组织学分析确定最终诊断。利用专用软件提取病变内容的纹理特征,进一步用于良性与恶性病变、原发肿瘤与转移瘤、恶性与交界性病变、良性与交界性病变的比较。通过单变量和接收者操作特征分析以及使用k-近邻分类器来评估纹理特征的区分能力。结果。单因素分析显示,良、恶性病变(差异方差参数,p=0.0074)和恶性、交界性肿瘤(相关参数,p=0.488)的比较结果均有统计学意义。该分类器在区分原发肿瘤和卵巢转移瘤时准确率最高(83.33%)。结论。质地参数能够根据其内容成功地区分不同类型的卵巢囊性病变,但尚不完全清楚这些差异是由于液体的物理性质还是它们对特定组织病理学组的外观。如果进一步验证,放射组学可以为卵巢囊性肿瘤的诊断提供快速和非侵入性的替代方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Medicine and Pharmacy Reports
Medicine and Pharmacy Reports Medicine-Medicine (all)
CiteScore
3.10
自引率
0.00%
发文量
63
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