Deep myometrial invasion

深肌层浸润
  • 文章类型: Journal Article
    目的:评估为期4个月的培训计划对放射科住院医师使用MRI评估子宫内膜癌(EC)深肌层侵犯(DMA)诊断准确性的影响。
    方法:三名具有有限ECMRI经验的放射科住院医师参加了培训计划,其中包括传统的说教课程,以案例为中心的研讨会,和互动类。利用120次ECMRI扫描的训练数据集,学员在五个阅读课程中独立评估了案例的子集。每个子集由30次扫描组成,第一个和最后一个案例相同,共读取150次。诊断准确性指标,评估时间(四舍五入到最近的分钟),并记录置信水平(使用5点Likert量表)。获得学习曲线,绘制了三名受训者的诊断准确性和子集的平均值。解剖病理学结果作为存在dmi的参考标准。
    结果:三名学员表现出不同的起点,具有学习曲线和训练表现更加同质化的趋势。在五个子集中,平均受训者的诊断准确性从64%(56%-76%)提高到88%(80%-94%)(p<0.001)。减少评估时间(5.92至4.63分钟,p<0.018)和增强的置信水平(3.58至3.97,p=0.12)。灵敏度的提高,特异性,正预测值,并注意到阴性预测值,特别是特异性从第一个子集的56%(41%-68%)提高到第五个子集的86%(74%-94%)(p=0.16)。虽然没有达到统计学意义,这些进步使学员与文学表现基准保持一致。
    结论:结构化培训计划显着提高了放射科住院医师在MRI上评估ECMI的诊断准确性,强调积极的基于病例的培训在放射学住院医师课程中提高肿瘤成像技能的有效性。
    OBJECTIVE: To evaluate the impact of a four-month training program on radiology residents\' diagnostic accuracy in assessing deep myometrial invasion (DMI) in endometrial cancer (EC) using MRI.
    METHODS: Three radiology residents with limited EC MRI experience participated in the training program, which included conventional didactic sessions, case-centric workshops, and interactive classes. Utilizing a training dataset of 120 EC MRI scans, trainees independently assessed subsets of cases over five reading sessions. Each subset consisted of 30 scans, the first and the last with the same cases, for a total of 150 reads. Diagnostic accuracy metrics, assessment time (rounded to the nearest minute), and confidence levels (using a 5-point Likert scale) were recorded. The learning curve was obtained plotting the diagnostic accuracy of the three trainees and the average over the subsets. Anatomopathological results served as the reference standard for DMI presence.
    RESULTS: The three trainees exhibited heterogeneous starting point, with a learning curve and a trend to more homogeneous performance with training. The diagnostic accuracy of the average trainee raised from 64 % (56 %-76 %) to 88 % (80 %-94 %) across the five subsets (p < 0.001). Reductions in assessment time (5.92 to 4.63 min, p < 0.018) and enhanced confidence levels (3.58 to 3.97, p = 0.12) were observed. Improvements in sensitivity, specificity, positive predictive value, and negative predictive value were noted, particularly for specificity which raised from 56 % (41 %-68 %) in the first to 86 % (74 %-94 %) in the fifth subset (p = 0.16). Although not reaching statistical significance, these advancements aligned the trainees with literature performance benchmarks.
    CONCLUSIONS: The structured training program significantly enhanced radiology residents\' diagnostic accuracy in assessing DMI for EC on MRI, emphasizing the effectiveness of active case-based training in refining oncologic imaging skills within radiology residency curricula.
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  • 文章类型: Journal Article
    背景:子宫内膜癌(EC)是最常见的妇科恶性肿瘤之一,发病率越来越高,术前准确诊断深肌层侵犯(depometrialinvention,简称dmi)是个性化治疗的关键.
    目的:确定基于磁共振成像(MRI)的放射组学列线图对国际妇产科联合会(FIGO)I期EC中的MI存在的预测价值。
    方法:我们回顾性地从两个中心收集了163例经病理证实的I期EC患者,并将所有样本分为训练组(中心1)和验证组(中心2)。采用logistic回归分析临床和常规影像学指标,构建常规诊断模型(M1)。从轴向T2加权和轴向对比增强T1加权(CE-T1W)图像中提取的影像组学特征采用组内相关系数处理,Mann-WhitneyU测试,最小绝对收缩和选择运算符,并与Akaike信息标准进行逻辑回归分析,以构建联合的影像组学签名(M2)。列线图(M3)由M1和M2构成。绘制校准和决策曲线以评估训练和验证队列中的列线图。通过受试者工作特征曲线下面积(AUC)评估每个指标和模型的诊断性能。
    结果:最终从CE-T1WMRI中选择了四个最重要的影像组学特征。对于MI的诊断,训练组和验证组M1的AUCT/AUCV为0.798/0.738,M2的AUCT/AUCV为0.880/0.852,M3的AUCT/AUCV为0.936/0.871,分别。校准曲线表明M3与理想值吻合良好。决策曲线分析提示了列线图的潜在临床应用价值。
    结论:基于MRI影像组学和临床影像学指标的列线图可以改善FIGOI期EC患者的MI诊断。
    BACKGROUND: Endometrial carcinoma (EC) is one of the most common gynecological malignancies with an increasing incidence, and an accurate preoperative diagnosis of deep myometrial invasion (DMI) is crucial for personalized treatment.
    OBJECTIVE: To determine the predictive value of a magnetic resonance imaging (MRI)-based radiomics nomogram for the presence of DMI in the International Federation of Gynecology and Obstetrics (FIGO) stage I EC.
    METHODS: We retrospectively collected 163 patients with pathologically confirmed stage I EC from two centers and divided all samples into a training group (Center 1) and a validation group (Center 2). Clinical and routine imaging indicators were analyzed by logistical regression to construct a conventional diagnostic model (M1). Radiomics features extracted from the axial T2-weighted and axial contrast-enhanced T1-weighted (CE-T1W) images were treated with the intraclass correlation coefficient, Mann-Whitney U test, least absolute shrinkage and selection operator, and logistic regression analysis with Akaike information criterion to build a combined radiomics signature (M2). A nomogram (M3) was constructed by M1 and M2. Calibration and decision curves were drawn to evaluate the nomogram in the training and validation cohorts. The diagnostic performance of each indicator and model was evaluated by the area under the receiver operating characteristic curve (AUC).
    RESULTS: The four most significant radiomics features were finally selected from the CE-T1W MRI. For the diagnosis of DMI, the AUCT /AUCV of M1 was 0.798/0.738, the AUCT /AUCV of M2 was 0.880/0.852, and the AUCT /AUCV of M3 was 0.936/0.871 in the training and validation groups, respectively. The calibration curves showed that M3 was in good agreement with the ideal values. The decision curve analysis suggested potential clinical application values of the nomogram.
    CONCLUSIONS: A nomogram based on MRI radiomics and clinical imaging indicators can improve the diagnosis of DMI in patients with FIGO stage I EC.
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  • 文章类型: Meta-Analysis
    评价并比较经阴道三维超声(3D-TVS)和磁共振成像(MRI)对子宫内膜癌(EC)患者深肌层浸润(DMI)和宫颈浸润的诊断试验(DTA)准确性及手术计划。
    本系统综述和荟萃分析研究了EC患者的MRI和3D-TVS的DTA对DMI和宫颈侵犯的影响。使用MEDLINE进行文献检索,Scopus,EMBASE,ScienceDirect,科克伦图书馆,ClinicalTrials.gov,Cochrane中央控制试验登记册,欧盟临床试验注册和世界卫生组织国际临床试验注册平台,以确定2000年1月至2021年12月之间发表的相关研究。使用诊断准确性研究质量评估-2(QUADAS-2)工具评估研究质量。
    五项研究,包括450名患者,包括在系统审查中。所有五项研究都比较了3D-TVS与MRI的DTA,三项研究比较了3D-TVS与MRI对宫颈侵犯的DTA。汇集灵敏度,使用3D-TVS检测MI的正似然比和负似然比为77%(95%CI,66-85%),分别为4.57和0.31。MRI上的MI检测值分别为80%(95%CI,73-86%),4.22和0.24。双变量回归表明3D-TVS和MRI的DTA相似(P=0.80),可以正确识别DMA。3D-TVS检测宫颈侵犯的合并诊断比值比为3.11(95%CI,2.09-4.14),MRI为2.36(95%CI,0.90-3.83)。在QUADAS-2中评估的四个领域中,大多数领域的偏倚风险较低。
    3D-TVS在评估STI和宫颈侵犯的敏感性和特异性方面表现出良好的诊断准确性。结果与MRI相当。因此,我们证实了3D-TVS在EC患者的术前分期和手术计划中的潜在作用.©2022作者由JohnWiley&SonsLtd代表国际妇产科超声学会出版的妇产科超声。
    To evaluate and compare the diagnostic test accuracy (DTA) of three-dimensional transvaginal ultrasound (3D-TVS) and magnetic resonance imaging (MRI) for deep myometrial infiltration (DMI) and cervical invasion for preoperative staging and surgery planning in patients with endometrial cancer (EC).
    This systematic review and meta-analysis investigated the DTA of MRI and 3D-TVS for DMI and cervical invasion in patients with EC. A literature search was performed using MEDLINE, Scopus, EMBASE, ScienceDirect, The Cochrane library, ClinicalTrials.gov, Cochrane Central Register of Controlled Trials, EU Clinical Trials Register and World Health Organization International Clinical Trials Registry Platform to identify relevant studies published between January 2000 and December 2021. Study quality was assessed using the Quality Assessment of Diagnostic Accuracy Studies-2 (QUADAS-2) tool.
    Five studies, including a total of 450 patients, were included in the systematic review. All five studies compared the DTA of 3D-TVS vs MRI for DMI, and three studies compared the DTA of 3D-TVS vs MRI for cervical invasion. Pooled sensitivity, positive likelihood ratio and negative likelihood ratio for detecting DMI using 3D-TVS were 77% (95% CI, 66-85%), 4.57 and 0.31, respectively. The respective values for detecting DMI on MRI were 80% (95% CI, 73-86%), 4.22 and 0.24. Bivariate metaregression indicated a similar DTA of 3D-TVS and MRI (P = 0.80) for the correct identification of DMI. Pooled ln diagnostic odds ratio for detecting cervical invasion was 3.11 (95% CI, 2.09-4.14) for 3D-TVS and 2.36 (95% CI, 0.90-3.83) for MRI. The risk of bias was low for most of the four domains assessed in QUADAS-2.
    3D-TVS demonstrated good diagnostic accuracy in terms of sensitivity and specificity for the evaluation of DMI and cervical invasion, with results comparable with those of MRI. Thus, we confirmed the potential role of 3D-TVS in the preoperative staging and surgery planning in patients with EC. © 2022 The Authors. Ultrasound in Obstetrics & Gynecology published by John Wiley & Sons Ltd on behalf of International Society of Ultrasound in Obstetrics and Gynecology.
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  • 文章类型: Journal Article
    OBJECTIVE: This study investigates the differences in diagnostic performance between diffuse-weighted imaging (DWI) and dynamic contrast-enhanced imaging (DCE), either alone or in combination with T2-weighted imaging (T2WI), for diagnosing deep myometrial invasion (dMI) of endometrial cancers (EC).
    METHODS: We performed a comprehensive search for published studies comparing DWI and DCE for preoperatively diagnosing dMI of EC. The overall diagnostic accuracy of each test was calculated using the areas under the summary receiver operating characteristic curves (AUCs). The sensitivities and specificities were compared using bivariate meta-regression.
    RESULTS: Pooled analysis of nineteen studies with 961 patients (main group) showed that DWI had a larger AUC (0.943, 95% confidence interval (CI) = 0.921-0.967) than DCE (0.922, 95% CI = 0.893-0.953). For the subgroup comprising 7 studies, DWI combined with T2WI and DCE combined with T2WI showed AUCs of 0.959 (95% CI, 0.932-0.986) and 0.929 (95% CI, 0.847-1.000), respectively. None of the differences in AUCs were statistically significant. All comparisons of the sensitivities and specificities of the main group and subgroup also showed no significant differences.
    CONCLUSIONS: This meta-analysis found no significant difference in diagnostic performance between DWI and DCE for diagnosis of dMI in EC. DWI may be preferred for its ease of use in clinical practice.
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  • 文章类型: Journal Article
    子宫肌层浸润深度影响子宫内膜癌(EC)患者的治疗和预后,常规评估使用MR成像(MRI)。然而,只有少数计算机辅助诊断方法被报道用于使用MRI识别深肌层侵犯(DMA).此外,这些现有方法表现出相对不令人满意的灵敏度和特异性。这项研究提出了一种新颖的计算机化方法,以促进在MRI上准确检测STI。该方法仅需要由人或计算机提供的子宫体区域而不是肿瘤区域。我们还提出了一种称为LS的几何特征来描述由EC触发的子宫内组织结构的不规则性,这在其他研究中还没有被用于MI预测模型。提取纹理特征,然后通过递归特征消除自动选择。利用本研究中设计的强特征和弱特征的特征融合策略,多个概率支持向量机结合了LS和纹理特征,然后将其合并以形成集成模型EPSVM。通过留一法交叉验证评估模型性能。我们做了以下比较,EPSVM与常用分类器,如随机森林,逻辑回归,和朴素贝叶斯;EPSVM与仅使用LS或纹理特征的模型。结果表明,EPSVM达到了一定的准确性,灵敏度,特异性,F1得分为93.7%,94.7%,93.3%,87.8%,所有这些都高于常用的分类器和仅使用LS或纹理特征的模型。与现有研究的方法相比,EPSVM在灵敏度和特异性方面都表现出高性能。此外,LS可以实现精度,灵敏度,特异性为89.9%,89.5%,90.0%。因此,所设计的几何特征LS对于MI检测具有重要意义。在提出的EPSVM中融合LS和纹理特征可以提供更可靠的预测。基于所提出的方法的计算机辅助分类可以帮助放射科医生准确地识别MRI上的DMI。
    The depth of myometrial invasion affects the treatment and prognosis of patients with endometrial cancer (EC), conventionally evaluated using MR imaging (MRI). However, only a few computer-aided diagnosis methods have been reported for identifying deep myometrial invasion (DMI) using MRI. Moreover, these existing methods exhibit relatively unsatisfactory sensitivity and specificity. This study proposes a novel computerized method to facilitate the accurate detection of DMI on MRI. This method requires only the corpus uteri region provided by humans or computers instead of the tumor region. We also propose a geometric feature called LS to describe the irregularity of the tissue structure inside the corpus uteri triggered by EC, which has not been leveraged for the DMI prediction model in other studies. Texture features are extracted and then automatically selected by recursive feature elimination. Utilizing a feature fusion strategy of strong and weak features devised in this study, multiple probabilistic support vector machines incorporate LS and texture features, which are then merged to form the ensemble model EPSVM. The model performance is evaluated via leave-one-out cross-validation. We make the following comparisons, EPSVM versus the commonly used classifiers such as random forest, logistic regression, and naive Bayes; EPSVM versus the models using LS or texture features alone. The results show that EPSVM attains an accuracy, sensitivity, specificity, and F1 score of 93.7%, 94.7%, 93.3%, and 87.8%, all of which are higher than those of the commonly used classifiers and the models using LS or texture features alone. Compared with the methods in existing studies, EPSVM exhibits high performance in terms of both sensitivity and specificity. Moreover, LS can achieve an accuracy, sensitivity, and specificity of 89.9%, 89.5%, and 90.0%. Thus, the devised geometric feature LS is significant for DMI detection. The fusion of LS and texture features in the proposed EPSVM can provide more reliable prediction. The computer-aided classification based on the proposed method can assist radiologists in accurately identifying DMI on MRI.
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  • 文章类型: Evaluation Study
    Deep myometrial invasion (≥50%) is a prognostic factor for lymph node metastases and decreased survival in endometrial cancer. There is no consensus regarding which pre/intraoperative diagnostic method should be preferred. Our aim was to explore the pattern of diagnostic methods for myometrial invasion assessment in Sweden and to evaluate differences among magnetic resonance imaging (MRI), transvaginal sonography, frozen section, and gross examination in clinical practice.
    This is a nationwide historical cohort study; women with endometrial cancer with data on assessment of myometrial invasion and FIGO stage I-III registered in the Swedish Quality Registry for Gynecologic Cancer (SQRGC) between 2017 and 2019 were eligible. Data on age, histology, FIGO stage, method, and results of myometrial invasion assessment, pathology results, and hospital level were collected from the SQRGC. The final assessment by the pathologist was considered the reference standard.
    In the study population of 1401 women, 32% (n = 448) had myometrial invasion of 50% of more. The methods reported for myometrial invasion assessment were transvaginal sonography in 59%, MRI in 28%, gross examination in 8% and frozen section in 5% of cases. Only minor differences were found for age and FIGO stage when comparing methods applied for myometrial invasion assessment. The sensitivity, specificity, and accuracy to find myometrial invasion of 50% or more with transvaginal sonography were 65.6%, 80.3%, and 75.8%, for MRI they were 76.9%, 71.9%, and 73.8%, for gross examination they were 71.9%, 93.6%, and 87.3%, and for frozen section they were 90.0%, 92.7%, and 92.0%, respectively.
    In Sweden, the assessment of deep myometrial invasion is most often performed with transvaginal sonography, but the sensitivity is lower than for the other diagnostic methods. In clinical practice, the accuracy is moderate for transvaginal sonography and MRI.
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  • 文章类型: Journal Article
    OBJECTIVE: The identification of deep myometrial invasion (DMI) represents a fundamental aspect in patients with endometrial cancer (EC) for accurate disease staging. It can be detected on MRI using T2-weighted (T2-w), diffusion weighted (DWI) and dynamic contrast enhanced sequences (DCE). Aim of the study was to perform a multi-reader evaluation of such sequences to identify the most accurate and its reliability for the best protocol.
    METHODS: In this multicenter retrospective study, MRI were independently evaluated by 4 radiologists (2 senior and 2 novice) with a sequence-based approach to identify DMI. The performance of the entire protocol was also evaluated. A comparison between the different sequences assessed by the same reader was performed using receiver operating curve and post-hoc analysis. Intraclass Correlation Coefficient (ICC) was used to assess inter- and intra-observer variability.
    RESULTS: A total of 92 patients were included. The performance of the readers did not show significant differences among DWI, DCE and the entire protocol. For only one senior radiologist, who reached the highest diagnostic accuracy with the entire protocol (82,6 %), both DWI (p = 0,0197) and entire protocol (p = 0,0039) were found significantly superior to T2-w. The highest inter-observer agreement was obtained with the entire protocol by expert readers (ICC = 0,77).
    CONCLUSIONS: For the detection of DMI, the performances of DWI and DCE alone and that of a complete protocol do not significantly differ, even though the latter ensures the highest reliability particularly for expert readers. In cases in which T2-w and DWI are consistent, an unenhanced protocol could be proposed.
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  • 文章类型: Journal Article
    评价MRI影像组学驱动的机器学习(ML)模型在子宫内膜癌(EC)患者深肌层浸润(depometrialinvention,driving,drives,detainst,drivalinspection,drivalinspective,drivalinspecial,drivalinspecting,dometrialinchements,ded,
    回顾性选择EC患者的术前MRI扫描。三位放射科医生对T2加权图像进行了全病变分割,以进行特征提取。在训练集和测试集(80/20%比例)中随机分裂群体之前测试特征鲁棒性。多步特征选择被应用于第一个,不包括非信息,低方差特征和冗余,高度相关的。使用随机森林包装来识别其余信息中的最大信息。使用10倍交叉验证在训练集中调整并最终确定了J48决策树的集合,然后在测试集上进行评估。放射科医生在没有ML的情况下以及在ML的帮助下评估了所有MRI扫描,以检测MI的存在。McNemars的测试用于比较两个读数。
    在54名患者中,17有MDI。总之,提取了1132个特征。选择功能后,随机森林包装器确定了用于ML训练的三个最有用的信息。在交叉验证和最终测试中,分类器的准确率分别为86%和91%,接收器工作特性曲线下的面积分别为0.92和0.94。分别。使用ML时,放射科医师的表现从82%增加到100%(p=0.48)。
    我们证明了影像组学驱动的ML模型在MRT2-w图像上进行MI检测的可行性,这可能有助于放射科医生提高其性能。
    To evaluate an MRI radiomics-powered machine learning (ML) model\'s performance for the identification of deep myometrial invasion (DMI) in endometrial cancer (EC) patients and explore its clinical applicability.
    Preoperative MRI scans of EC patients were retrospectively selected. Three radiologists performed whole-lesion segmentation on T2-weighted images for feature extraction. Feature robustness was tested before randomly splitting the population in training and test sets (80/20% proportion). A multistep feature selection was applied to the first, excluding noninformative, low variance features and redundant, highly-intercorrelated ones. A Random Forest wrapper was used to identify the most informative among the remaining. An ensemble of J48 decision trees was tuned and finalized in the training set using 10-fold cross-validation, and then assessed on the test set. A radiologist evaluated all MRI scans without and with the aid of ML to detect the presence of DMI. McNemars\'s test was employed to compare the two readings.
    Of the 54 patients included, 17 had DMI. In all, 1132 features were extracted. After feature selection, the Random Forest wrapper identified the three most informative which were used for ML training. The classifier reached an accuracy of 86% and 91% and areas under the Receiver Operating Characteristic curve of 0.92 and 0.94 in the cross-validation and final testing, respectively. The radiologist performance increased from 82% to 100% when using ML (p = 0.48).
    We proved the feasibility of a radiomics-powered ML model for DMI detection on MR T2-w images that might help radiologists to increase their performance.
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  • 文章类型: Journal Article
    UNASSIGNED: We investigated the efficacy of circulating biomarkers together with histological grade and age to predict deep myometrial invasion (dMI) in endometrial cancer patients.
    UNASSIGNED: HE4ren was developed adjusting HE4 serum levels towards decreased glomerular filtration rate as quantified by the eGFR-EPI formula. Preoperative HE4, HE4ren, CA125, age, and grade were evaluated in the context of perioperative depth of myometrial invasion in endometrial cancer (EC) patients. Continuous and categorized models were developed by binary logistic regression for any-grade and for G1-or-G2 patients based on single-institution data from 120 EC patients and validated against multicentric data from 379 EC patients.
    UNASSIGNED: In non-cancer individuals, serum HE4 levels increase log-linearly with reduced glomerular filtration of eGFR ≤ 90 ml/min/1.73 m2. HE4ren, adjusting HE4 serum levels to decreased eGFR, was calculated as follows: HE4ren = exp[ln(HE4) + 2.182 × (eGFR-90) × 10-2]. Serum HE4 but not HE4ren is correlated with age. Model with continuous HE4ren, age, and grade predicted dMI in G1-or-G2 EC patients with AUC = 0.833 and AUC = 0.715, respectively, in two validation sets. In a simplified categorical model for G1-or-G2 patients, risk factors were determined as grade 2, HE4ren ≥ 45 pmol/l, CA125 ≥ 35 U/ml, and age ≥ 60. Cumulation of weighted risk factors enabled classification of EC patients to low-risk or high-risk for dMI.
    UNASSIGNED: We have introduced the HE4ren formula, adjusting serum HE4 levels to reduced eGFR that enables quantification of time-dependent changes in HE4 production and elimination irrespective of age and renal function in women. Utilizing HE4ren improves performance of biomarker-based models for prediction of dMI in endometrial cancer patients.
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  • 文章类型: Evaluation Study
    目的:探讨由妇科影像学专业放射科医师发布的次级报告在MRI上确定子宫内膜癌深肌层浸润的附加值。
    方法:回顾性分析了55例子宫内膜癌患者的MRI的初步(来自转诊机构)和次要(由亚专业放射科医师)解释。一位对临床病理信息不知情的放射科医生评估了这两个报告是否存在深肌层浸润。参考标准基于子宫切除术标本。使用Kappa系数(k)来测量它们的一致性。McNemar测试和接收器工作特性(ROC)分析用于比较灵敏度,曲线下的特异性和面积(AUC)。
    结果:25例(45.5%)患者存在深肌层浸润。在27.3%(15/55;k=0.458)结果不一致的患者中,次要解释在10例(66.7%)中是正确的。次要报告的敏感性高于初始报告(76.0%vs.48.0%,p=0.039),而特异性无显著差异(70.0%vs.76.7%,p=0.668)。在ROC分析中,在次要报告中有较高AUC的趋势(0.785vs0.669,p=0.096).
    结论:亚专科妇科肿瘤放射科医师的MRI二级读数可能为确定子宫内膜癌的深肌层浸润提供了增量价值。
    结论:•深肌层浸润是子宫内膜癌的重要预后因素。•对深肌层侵犯的评估通常在初始报告和二次报告之间存在差异。•次要报告显示更高的灵敏度和准确性。•MRI的二次检查可能为子宫内膜癌患者提供增量价值。
    OBJECTIVE: To investigate the added value of secondary reports issued by radiologists subspecializing in gynaecologic imaging for determining deep myometrial invasion of endometrial cancer on MRI.
    METHODS: Initial (from referring institutions) and secondary (by subspecialized radiologists) interpretations of MRI of 55 patients with endometrial cancer were retrospectively reviewed. A radiologist blinded to clinicopathological information assessed both reports for the presence of deep myometrial invasion. Reference standard was based on hysterectomy specimens. Kappa coefficients (k) were used to measure their concordance. McNemar testing and receiver operating characteristic (ROC) analysis was used to compare sensitivities, specificities and areas under the curves (AUCs).
    RESULTS: Deep myometrial invasion was present in 25 (45.5 %) patients. Among 27.3 % (15/55; k = 0.458) patients with discrepant results, secondary interpretations were correct in 10 (66.7 %) cases. Sensitivity was higher in secondary than in initial reports (76.0 % vs. 48.0 %, p = 0.039) while no significant difference was seen in specificity (70.0 % vs. 76.7 %, p = 0.668). At ROC analysis, there was a tendency for higher AUCs in secondary reports (0.785 vs 0.669, p = 0.096).
    CONCLUSIONS: Secondary readings of MRI by subspecialized gynaecologic oncologic radiologists may provide incremental value in determining deep myometrial invasion of endometrial cancer.
    CONCLUSIONS: • Deep myometrial invasion is an important prognostic factor in endometrial cancer. • Assessment of deep myometrial invasion is often discrepant between initial and secondary reports. • Secondary reports showed higher sensitivity and accuracy. • Secondary review of MRI may provide incremental value in endometrial cancer patients.
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