Determination of p53abn endometrial cancer: a multitask analysis using radiological-clinical nomogram on MRI.

IF 1.8 4区 医学 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Yan Ning, Wei Liu, Haijie Wang, Feiran Zhang, Xiaojun Chen, Yida Wang, Tianping Wang, Guang Yang, He Zhang
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引用次数: 0

Abstract

Objectives: We aimed to differentiate endometrial cancer (EC) between TP53mutation (P53abn) and Non-P53abn subtypes using radiological-clinical nomogram on EC body volume MRI.

Methods: We retrospectively recruited 227 patients with pathologically proven EC from our institution. All these patients have undergone molecular pathology diagnosis based on the Cancer Genome Atlas. Clinical characteristics and histological diagnosis were recorded from the hospital information system. Radiomics features were extracted from online Pyradiomics processors. The diagnostic performance across different acquisition protocols was calculated and compared. The radiological-clinical nomogram was established to determine the nonendometrioid, high-risk, and P53abn EC group.

Results: The best MRI sequence for differentiation P53abn from the non-P53abn group was contrast-enhanced T1WI (test AUC: 0.8). The best MRI sequence both for differentiation endometrioid cancer from nonendometrioid cancer and high-risk from low- and intermediate-risk groups was apparent diffusion coefficient map (test AUC: 0.665 and 0.690). For all 3 tasks, the combined model incorporating all the best discriminative features from each sequence yielded the best performance. The combined model achieved an AUC of 0.845 in the testing cohorts for P53abn cancer identification. The MR-based radiomics diagnostic model performed better than the clinical-based model in determining P53abn EC (AUC: 0.834 vs 0.682).

Conclusion: In the present study, the diagnostic model based on the combination of both radiomics and clinical features yielded a higher performance in differentiating nonendometrioid and P53abn cancer from other EC molecular subgroups, which might help design a tailed treatment, especially for patients with high-risk EC.

Advances in knowledge: (1) The contrast-enhanced T1WI was the best MRI sequence for differentiation P53abn from the non-P53abn group (test AUC: 0.8). (2) The radiomics-based diagnostic model performed better than the clinical-based model in determining P53abn EC (AUC: 0.834 vs 0.682). (3) The proposed model derived from multi-parametric MRI images achieved a higher accuracy in P53abn EC identification (AUC: 0.845).

确定 p53abn 子宫内膜癌:利用核磁共振成像的放射学-临床提名图进行多任务分析。
目的:我们旨在利用子宫内膜癌体容积磁共振成像的放射学-临床提名图,区分TP53突变(P53abn)和非P53abn亚型的子宫内膜癌(EC):我们回顾性地从本院招募了 227 例经病理证实的 EC 患者。所有这些患者都根据癌症基因组图谱(TCGA)进行了分子病理学诊断。临床特征和组织学诊断由医院信息系统记录。放射组学特征从在线 Pyradiomics 处理器中提取。计算并比较了不同采集方案的诊断性能。建立了放射学-临床提名图,以确定非子宫内膜异位症、高风险和P53abn EC组:对比增强 T1WI 是区分 P53abn 和非 P53abn 组的最佳 MRI 序列(测试 AUC:0.8)。区分子宫内膜样癌与非子宫内膜样癌以及高风险组与中低风险组的最佳磁共振成像序列是表观弥散系数图(检验 AUC:0.665 和 0.690)。在所有三项任务中,包含每个序列中所有最佳分辨特征的组合模型都取得了最佳性能。在 P53abn 癌症识别的测试队列中,组合模型的 AUC 达到了 0.845。在确定 P53abn EC 方面,基于 MR 的放射组学诊断模型比基于临床的模型表现更好(AUC:0.834 对 0.682):在本研究中,基于放射组学和临床特征相结合的诊断模型在区分非子宫内膜异位症和P53abn癌与其他EC分子亚组方面具有更高的性能,这可能有助于设计有针对性的治疗方法,尤其是针对高危EC患者。
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
British Journal of Radiology
British Journal of Radiology 医学-核医学
CiteScore
5.30
自引率
3.80%
发文量
330
审稿时长
2-4 weeks
期刊介绍: BJR is the international research journal of the British Institute of Radiology and is the oldest scientific journal in the field of radiology and related sciences. Dating back to 1896, BJR’s history is radiology’s history, and the journal has featured some landmark papers such as the first description of Computed Tomography "Computerized transverse axial tomography" by Godfrey Hounsfield in 1973. A valuable historical resource, the complete BJR archive has been digitized from 1896. Quick Facts: - 2015 Impact Factor – 1.840 - Receipt to first decision – average of 6 weeks - Acceptance to online publication – average of 3 weeks - ISSN: 0007-1285 - eISSN: 1748-880X Open Access option
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