Complete cytoreduction

  • 文章类型: Journal Article
    目标:COVID-19大流行带来了前所未有的全球变化,需要进行调整以应对公共卫生挑战。对晚期上皮性卵巢癌(EOC)手术的影响,以围手术期风险增加为标志,本研究基于及时发布的英国妇科肿瘤学会(BGCS)和欧洲妇科肿瘤学会(ESGO)指南,探讨了管理计划的变化.
    方法:分析了在英国三级中心接受细胞减灭术的332例晚期EOC患者的回顾性数据,并比较了COVID-19前期(2018-2019年)(n=189)和COVID-19时代(2020-2021年)(n=143)的结果,覆盖相同的时间范围(3月至12月)。主要结局包括残留病(RD)和无进展生存期(PFS),而次要结局是晚期EOC手术的ESGO质量指标(QI)。产生Kaplan-Meier曲线以说明PFS。
    结果:COVID-19前和COVID-19组的完全细胞减少率仍相当,分别为74.07%和72.03%,分别。ECOG表现状态存在差异(p=0.015),重症监护病房(ICU)入院(p=0.039),手术间隔减少(p=0.03),较低的手术复杂性评分(p=0.02),与前COVID-19组相比,COVID-19组的手术时间更长(p=0.01)。COVID-19前和COVID-19组的中位PFS率分别为37个月和34个月,分别(p=0.08)。在COVID-19时代,手术Q1-3保持不受损害。
    结论:COVID-19大流行引起的管理修改不会对细胞减少率或PFS产生不利影响。
    OBJECTIVE: The COVID-19 pandemic brought unprecedented global changes, necessitating adjustments to address public health challenges. The impact on advanced epithelial ovarian cancer (EOC) surgery, marked by increased perioperative risks, and changes in management plans was explored in this study based on promptly published British Gynaecologic Cancer Society (BGCS) and European Society of Gynaecologic Oncology (ESGO) guidelines.
    METHODS: Retrospective data from 332 patients with advanced EOC who underwent cytoreductive surgery at a UK tertiary center were analyzed, and the outcomes were compared between pre-COVID-19 (2018-2019) (n=189) and COVID-19 era (2020-2021) (n=143) cohorts, covering the same timeframe (March to December). Primary outcomes included residual disease (RD) and progression-free survival (PFS), while secondary outcomes were the ESGO quality indicators (QIs) for advanced EOC surgery. Kaplan-Meier curves were produced to illustrate PFS.
    RESULTS: Complete cytoreduction rates remained comparable at 74.07% and 72.03% for pre-COVID-19 and COVID-19 groups, respectively. Differences were observed in ECOG performance status (p=0.015), Intensive Care Unit (ICU) admissions (p=0.039) with less interval debulking surgeries (p=0.03), lower surgical complexity scores (p=0.02), and longer operative times in the COVID-19 group (p=0.01) compared to the pre-COVID-19 group. The median PFS rates were 37 months and 34 months in the pre-COVID-19 and COVID-19 groups, respectively (p=0.08). The surgical QIs 1-3 remained uncompromised during the COVID-19 era.
    CONCLUSIONS: Management modifications prompted by the COVID-19 pandemic did not adversely impact cytoreduction rates or PFS.
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  • 文章类型: Journal Article
    目的:尽管缺乏临床数据,荷兰政府正在考虑将每个中心的最小年手术量从20例增加到50例晚期卵巢癌(OC)的细胞减灭术(CRS)。这项研究旨在评估这种增加是否有必要。
    方法:这项基于人群的研究包括2019年至2022年间在18家荷兰医院注册的FIGO阶段IIB-IVBOC的所有CRS。短期结果包括CRS的结果,逗留时间,严重并发症,30天死亡率,辅助化疗的时间,和教科书的结果。患者按年度数量进行分层:低数量(9家医院,<25),中等容量(四家医院,29-37),和高容量(五家医院,54-84).描述性统计和多水平逻辑回归用于评估手术量和结果的(病例组合调整)关联。
    结果:共包括1646个间期CRS(iCRS)和789个主要CRS(pCRS)。在iCRS队列中未发现手术体积与不同结果之间的关联。在pCRS队列中,高容量与完全CRS发生率增加相关(aOR1.9,95%-CI1.2-3.1,p=0.010).此外,大容量与严重并发症发生率增加(aOR2.3,1.1-4.6,95%-CI1.3-4.2,p=0.022)和住院时间延长(aOR2.3,95%-CI1.3-4.2,p=0.005)相关.30天死亡率,辅助化疗的时间,在pCRS队列中,教科书结局与手术量无关.亚组分析(FIGO-IIIC-IVB期)显示相似的结果。各种病例组合因素显著影响结果,保证病例混合调整。
    结论:我们的分析不支持对晚期OC进一步集中iCRS。高容量与较高的完整pCRS相关,建议在这些医院中选择更准确的选择或采取更积极的方法。较高的完成率是以较高的严重并发症和长期入院为代价的。
    Despite lacking clinical data, the Dutch government is considering increasing the minimum annual surgical volume per center from twenty to fifty cytoreductive surgeries (CRS) for advanced-stage ovarian cancer (OC). This study aims to evaluate whether this increase is warranted.
    This population-based study included all CRS for FIGO-stage IIB-IVB OC registered in eighteen Dutch hospitals between 2019 and 2022. Short-term outcomes included result of CRS, length of stay, severe complications, 30-day mortality, time to adjuvant chemotherapy, and textbook outcome. Patients were stratified by annual volume: low-volume (nine hospitals, <25), medium-volume (four hospitals, 29-37), and high-volume (five hospitals, 54-84). Descriptive statistics and multilevel logistic regressions were used to assess the (case-mix adjusted) associations of surgical volume and outcomes.
    A total of 1646 interval CRS (iCRS) and 789 primary CRS (pCRS) were included. No associations were found between surgical volume and different outcomes in the iCRS cohort. In the pCRS cohort, high-volume was associated with increased complete CRS rates (aOR 1.9, 95%-CI 1.2-3.1, p = 0.010). Furthermore, high-volume was associated with increased severe complication rates (aOR 2.3, 1.1-4.6, 95%-CI 1.3-4.2, p = 0.022) and prolonged length of stay (aOR 2.3, 95%-CI 1.3-4.2, p = 0.005). 30-day mortality, time to adjuvant chemotherapy, and textbook outcome were not associated with surgical volume in the pCRS cohort. Subgroup analyses (FIGO-stage IIIC-IVB) showed similar results. Various case-mix factors significantly impacted outcomes, warranting case-mix adjustment.
    Our analyses do not support further centralization of iCRS for advanced-stage OC. High-volume was associated with higher complete pCRS, suggesting either a more accurate selection in these hospitals or a more aggressive approach. The higher completeness rates were at the expense of higher severe complications and prolonged admissions.
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  • 文章类型: Journal Article
    在晚期上皮性卵巢癌(EOC)手术中,术中输血(BT)没有明确的阈值。为了解决这个问题,我们设计了一种机器学习(ML)驱动的预测算法,旨在基于独立于现有BT策略的预期围手术期事件来提示和阐明BT的通信警报。我们分析了2014年至2019年间接受细胞减灭术的403例EOC患者的数据。估计血容量(EBV),使用公式EBV=体重×80计算,用于为个人干预设定10%EBV阈值。根据已知的估计失血量(EBL),我们确定了两个不同的组。受试者工作特征(ROC)曲线显示,预测事件高于既定阈值(AUC0.823,95%CI0.76-0.88)的结果令人满意。手术时间(OT)是影响预测的最重要因素。术中失血超过10%EBV与OT>250分钟相关,初级手术,浆液性组织学,表现状态0,R2切除和手术庞杂度评分>4。某些子程序,包括大肠切除术,造口形成,回盲部切除术/右半结肠切除术,肠系膜切除术,膀胱和上腹部腹壁切除术与介入风险升高有明显关联.我们的发现强调了提前获得OT粗略估计以精确预测血液需求的重要性。
    There is no well-defined threshold for intra-operative blood transfusion (BT) in advanced epithelial ovarian cancer (EOC) surgery. To address this, we devised a Machine Learning (ML)-driven prediction algorithm aimed at prompting and elucidating a communication alert for BT based on anticipated peri-operative events independent of existing BT policies. We analyzed data from 403 EOC patients who underwent cytoreductive surgery between 2014 and 2019. The estimated blood volume (EBV), calculated using the formula EBV = weight × 80, served for setting a 10% EBV threshold for individual intervention. Based on known estimated blood loss (EBL), we identified two distinct groups. The Receiver operating characteristic (ROC) curves revealed satisfactory results for predicting events above the established threshold (AUC 0.823, 95% CI 0.76-0.88). Operative time (OT) was the most significant factor influencing predictions. Intra-operative blood loss exceeding 10% EBV was associated with OT > 250 min, primary surgery, serous histology, performance status 0, R2 resection and surgical complexity score > 4. Certain sub-procedures including large bowel resection, stoma formation, ileocecal resection/right hemicolectomy, mesenteric resection, bladder and upper abdominal peritonectomy demonstrated clear associations with an elevated interventional risk. Our findings emphasize the importance of obtaining a rough estimate of OT in advance for precise prediction of blood requirements.
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  • 文章类型: Journal Article
    手术复杂性评分(SCS)已被广泛用于描述晚期上皮性卵巢癌(EOC)细胞减灭术期间的手术努力。提到各种多内脏切除术,它最好地将数字与子程序的复杂性结合起来。然而,并不是所有潜在的外科手术都用这个分数来描述.最近,欧洲妇科肿瘤学会(ESGO)建立了与实现完全细胞减量(CC0)相关的标准结局质量指标.需要定义将给予包括CCO的所有这些外科手术子程序的权重。在英国三级转诊中心分析了560名手术减少的晚期EOC患者的前瞻性收集数据。我们调整了结构化的ESGO卵巢癌报告模板。我们采用极限梯度提升(XGBoost)算法对一长串外科手术进行建模。我们应用Shapley加法解释(SHAP)框架来提供全局(队列)可解释性。我们使用Cox回归进行生存分析并构建Kaplan-Meier曲线。XGBoost模型以可接受的准确度预测CC0(曲线下面积[AUC]=0.70;95%置信区间[CI]=0.63-0.76)。视觉量化的特征重要性的预测CC0确定的上腹部周围切除术(UAP)是最重要的特征,其次是区域淋巴结切除术。UAP与膀胱腹水切除术和膈肌剥脱术的相关性最好(Pearson相关性>0.5)。盆腔和主动脉旁淋巴结清扫术和回盲部切除/右半结肠切除术显示清晰的拐点,这增加了CC0的概率。当UAP仅添加到包含工程特征的复合模型时,它显著提高了其预测价值(AUC=0.80,CI=0.75-0.84)。UAP预测无进展生存期(HR=1.76,CI1.14-2.70,P:0.01),但不预测总生存期(HR=1.06,CI0.56-1.99,P:0.86)。SCS没有显著的生存影响。机器学习允许通过加权那些似乎更能预测CC0的手术子程序的相对重要性来进行操作特征选择。我们的研究将UAP确定为手术减少的晚期EOC女性中CC0的最重要手术预测因子。这里提出的分类模型可以潜在地用更大数量的样本进行训练,以在高输出三级中心中生成鲁棒的数字手术参考。应彻底检查上腹部象限,以确保可实现CC0。
    The Surgical Complexity Score (SCS) has been widely used to describe the surgical effort during advanced stage epithelial ovarian cancer (EOC) cytoreduction. Referring to a variety of multi-visceral resections, it best combines the numbers with the complexity of the sub-procedures. Nevertheless, not all potential surgical procedures are described by this score. Lately, the European Society for Gynaecological Oncology (ESGO) has established standard outcome quality indicators pertinent to achieving complete cytoreduction (CC0). There is a need to define what weight all these surgical sub-procedures comprising CC0 would be given. Prospectively collected data from 560 surgically cytoreduced advanced stage EOC patients were analysed at a UK tertiary referral centre.We adapted the structured ESGO ovarian cancer report template. We employed the eXtreme Gradient Boosting (XGBoost) algorithm to model a long list of surgical sub-procedures. We applied the Shapley Additive explanations (SHAP) framework to provide global (cohort) explainability. We used Cox regression for survival analysis and constructed Kaplan-Meier curves. The XGBoost model predicted CC0 with an acceptable accuracy (area under curve [AUC] = 0.70; 95% confidence interval [CI] = 0.63-0.76). Visual quantification of the feature importance for the prediction of CC0 identified upper abdominal peritonectomy (UAP) as the most important feature, followed by regional lymphadenectomies. The UAP best correlated with bladder peritonectomy and diaphragmatic stripping (Pearson\'s correlations > 0.5). Clear inflection points were shown by pelvic and para-aortic lymph node dissection and ileocecal resection/right hemicolectomy, which increased the probability for CC0. When UAP was solely added to a composite model comprising of engineered features, it substantially enhanced its predictive value (AUC = 0.80, CI = 0.75-0.84). The UAP was predictive of poorer progression-free survival (HR = 1.76, CI 1.14-2.70, P: 0.01) but not overall survival (HR = 1.06, CI 0.56-1.99, P: 0.86). The SCS did not have significant survival impact. Machine Learning allows for operational feature selection by weighting the relative importance of those surgical sub-procedures that appear to be more predictive of CC0. Our study identifies UAP as the most important procedural predictor of CC0 in surgically cytoreduced advanced-stage EOC women. The classification model presented here can potentially be trained with a larger number of samples to generate a robust digital surgical reference in high output tertiary centres. The upper abdominal quadrants should be thoroughly inspected to ensure that CC0 is achievable.
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  • 文章类型: Journal Article
    背景:预测手术结果的当代努力集中在传统的离散手术风险因素之间的关联上。我们旨在确定非结构化手术笔记的自然语言处理(NLP)是否可以改善细胞减灭术后晚期上皮性卵巢癌(EOC)女性残留疾病的预测。
    方法:查询电子健康记录以确定患有晚期EOC的女性,包括其手术记录。术语频率-反向文档频率(TF-IDF)评分用于量化单词序列(n-gram)关于残留疾病存在的辨别能力。我们采用了最先进的基于RoBERTa的分类器来处理非结构化的手术笔记。使用标准性能指标衡量歧视。然后使用离散的和工程化的临床特征以及由RoBERTa分类器输出的概率在相同的数据集上训练XGBoost模型。
    结果:该队列由8名外科医生在2014年1月至2019年12月期间进行的555例EOC细胞减灭术组成。确定了R0和非R0切除之间通过n-gramTF-IDF评分差异加权的离散词云。在两组之间最好区分单词\'粘附\'和\'siliary疾病\'。RoBERTa模型达到了很高的评价指标(AUROC.86;AUPRC.87,精度,召回,F1得分为.77,准确率为.81)。同样,它优于使用离散的临床和工程特征的模型,并且胜过其他最先进的NLP工具的性能。当来自RoBERTa分类器的概率与XGBoost模型中常用的预测因子相结合时,观察到整体模型性能的边际改善(AUROC和AUPRC为.91,所有其他指标相同)。
    结论:我们应用了一种特殊的方法从大量的文本手术数据中提取信息,并证明了它如何有效地用于分类预测,优于依赖于传统结构化数据的模型。最先进的NLP在生物医学文本中的应用可以改善现代EOC护理。
    BACKGROUND: Contemporary efforts to predict surgical outcomes focus on the associations between traditional discrete surgical risk factors. We aimed to determine whether natural language processing (NLP) of unstructured operative notes improves the prediction of residual disease in women with advanced epithelial ovarian cancer (EOC) following cytoreductive surgery.
    METHODS: Electronic Health Records were queried to identify women with advanced EOC including their operative notes. The Term Frequency - Inverse Document Frequency (TF-IDF) score was used to quantify the discrimination capacity of sequences of words (n-grams) regarding the existence of residual disease. We employed the state-of-the-art RoBERTa-based classifier to process unstructured surgical notes. Discrimination was measured using standard performance metrics. An XGBoost model was then trained on the same dataset using both discrete and engineered clinical features along with the probabilities outputted by the RoBERTa classifier.
    RESULTS: The cohort consisted of 555 cases of EOC cytoreduction performed by eight surgeons between January 2014 and December 2019. Discrete word clouds weighted by n-gram TF-IDF score difference between R0 and non-R0 resection were identified. The words \'adherent\' and \'miliary disease\' best discriminated between the two groups. The RoBERTa model reached high evaluation metrics (AUROC .86; AUPRC .87, precision, recall, and F1 score of .77 and accuracy of .81). Equally, it outperformed models that used discrete clinical and engineered features and outplayed the performance of other state-of-the-art NLP tools. When the probabilities from the RoBERTa classifier were combined with commonly used predictors in the XGBoost model, a marginal improvement in the overall model\'s performance was observed (AUROC and AUPRC of .91, with all other metrics the same).
    CONCLUSIONS: We applied a sui generis approach to extract information from the abundant textual surgical data and demonstrated how it can be effectively used for classification prediction, outperforming models relying on conventional structured data. State-of-art NLP applications in biomedical texts can improve modern EOC care.
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  • 文章类型: Journal Article
    目的:卵巢癌仍然是女性最致命的恶性肿瘤之一。最佳的手术细胞减灭术是影响晚期卵巢癌患者生存的最重要的预后因素。氦气等离子体设备(J-Plasma)最近已被引入这些患者的手术治疗中,并取得了一些有希望的结果。这项研究的目的是评估J-血浆在卵巢癌患者减瘤手术中的实用性。
    方法:对2020年1月至2022年7月使用J-Plasma设备进行细胞减灭术的卵巢癌患者的特征进行了单中心回顾性分析。
    结果:共13例患者纳入本研究。6例患者接受了原发性减积手术治疗,而7人在新辅助化疗后接受了间隔减积手术。9名患者(64%)实现了完全细胞减少,4例患者的CC-1。大多数患者没有任何重大并发症;只有1例患者患有小肠瘘,需要重新开腹手术。
    结论:J-血浆可安全地用于三级中心妇科肿瘤学家进行的卵巢癌减瘤手术。该技术可以安全地提高完全细胞减少率。
    OBJECTIVE: Ovarian cancer remains one of the most lethal malignancies in women. Optimal surgical cytoreduction is the most important prognostic factor of survival in patients with advanced ovarian cancer. The helium gas plasma device (J-Plasma) has recently been introduced into surgical treatment of these patients with some promising results. The aim of this study was to evaluate the utility of J-Plasma in the debulking surgery of patients with ovarian cancer.
    METHODS: A single center retrospective analysis of the characteristics of patients with ovarian cancer who had cytoreductive surgery with the use of J-Plasma device from January of 2020 until July of 2022 was conducted.
    RESULTS: A total of 13 patients were included in our study. Six patients were treated with primary debulking surgery, whereas seven underwent interval debulking surgery after neoadjuvant chemotherapy. Complete cytoreduction was achieved in nine patients (64%), and CC-1 in four patients. Most of the patients did not face any major complications; only 1 patient suffered from small bowel fistula that needed relaparotomy.
    CONCLUSIONS: J-Plasma can safely be used in ovarian cancer debulking surgeries performed by gynecologic oncologists in tertiary centres. This technology can safely increase the complete cytoreduction rates.
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  • 文章类型: Journal Article
    目的:教科书结局(TO)是一种用于肿瘤外科的复合结局指标,用于使用多种质量指标比较医院结局。这项研究旨在开发TO作为评估晚期卵巢癌细胞减灭术(CRS)患者医疗质量的结果指标。
    方法:这项基于人群的研究包括2017年至2020年在荷兰注册的FIGOIIIC-IVB原发性卵巢癌的所有CRS。主要结果是,定义为完整的CRS,加上没有30天的死亡率,严重并发症,住院时间延长(≥10天)。由于数据缺失,TO未包括辅助化疗的延迟开始(≥6周)。Logistic回归用于评估病例组合因素与TO的关联。使用漏斗图显示医院变化。
    结果:共包括1909个CRS,其中1434例为间期CRS,475例为主要CRS。在54%的间期CRS队列和47%的主要CRS队列中实现了TO。CRS后宏观残留病是未达到TO的最重要因素。在多变量逻辑回归分析中,年龄≥70岁与较低的TO率相关。在间期CRS队列中,医院之间的TO率范围为40%至69%,在主要CRS队列中为22%至100%。在这两种分析中,一家医院的TO率明显较低(不同医院).病例组合调整显着影响主要CRS分析中的TO率。
    结论:TO是一种合适的综合结果指标,可用于检测晚期卵巢癌患者接受CRS的医院医疗质量变化。病例混合调整提高了医院比较的准确性。
    Textbook outcome (TO) is a composite outcome measure used in surgical oncology to compare hospital outcomes using multiple quality indicators. This study aimed to develop TO as an outcome measure to assess healthcare quality for patients undergoing cytoreductive surgery (CRS) for advanced-stage ovarian cancer.
    This population-based study included all CRS for FIGO IIIC-IVB primary ovarian cancer registered in the Netherlands between 2017 and 2020. The primary outcome was TO, defined as a complete CRS, combined with the absence of 30-day mortality, severe complications, and prolonged length of admission (≥ten days). Delayed start of adjuvant chemotherapy (≥six weeks) was not included in TO because of missing data. Logistic regressions were used to assess the association of case-mix factors with TO. Hospital variation was displayed using funnel plots.
    A total of 1909 CRS were included, of which 1434 were interval CRS and 475 were primary CRS. TO was achieved in 54% of the interval CRS cohort and 47% of the primary CRS cohort. Macroscopic residual disease after CRS was the most important factor for not achieving TO. Age ≥ 70 was associated with lower TO rates in multivariable logistic regressions. TO rates ranged from 40% to 69% between hospitals in the interval CRS cohort and 22% to 100% in the primary CRS cohort. In both analyses, one hospital had significantly lower TO rates (different hospitals). Case-mix adjustment significantly affected TO rates in the primary CRS analysis.
    TO is a suitable composite outcome measure to detect hospital variation in healthcare quality for patients with advanced-stage ovarian cancer undergoing CRS. Case-mix adjustment improves the accuracy of the hospital comparison.
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  • 文章类型: Journal Article
    背景:卵巢癌的腹膜癌指数(PCI)和术中定位(IMO),在较小程度上,已在晚期上皮性卵巢癌(EOC)中得到普遍验证,以描述腹膜播散的程度,并被证明是手术结果的有力预测因子,在剖腹手术时评估的敏感性增加约为70%.这留下了改进的空间,因为二维解剖评分模型无法反映患者的真实解剖结构,正如外科医生看到的。我们假设在EOC患者中,特定解剖位置的肿瘤播散比PCI和IMO工具更能预测完全细胞减少(CC0)和生存率。(2)方法:我们分析了2014年1月至2019年12月在英国三级中心接受细胞减灭术的508例FIGO阶段IIIB-IVBEOC患者的前瞻性数据。我们调整了结构化的ESGO卵巢癌报告,以提供有关肿瘤播散模式(癌症解剖指纹)的详细信息。我们采用了极端梯度提升(XGBoost)来只对涉及EOC传播模式的变量进行建模,创建术中评分,并判断该评分对完全细胞减灭术(CC0)的预测能力。然后将接收器工作特性(ROC)曲线用于新评分与现有PCI和IMO工具之间的性能比较。我们应用Shapley加性解释(SHAP)框架来支持叙述的癌症指纹的特征选择,并提供全局和局部可解释性。使用Kaplan-Meier曲线和Cox回归进行生存分析。(3)结果:基于分配给癌症解剖指纹的特定权重来开发术中疾病评分。分数范围从0到24。XGBoost预测CC0切除(曲线下面积(AUC)=0.88CI=0.854-0.913)具有很高的准确性。小肠系膜器官特异性播散,大肠浆膜,和膈腹膜是全球最关键的特征。当添加到复合模型时,新评分略微提高了其预测价值(AUC=0.91,CI=0.849-0.963).我们确定了一个“转折点”,≤5,增加了CC0的概率。使用常规逻辑回归,对于CC0的预测,新评分优于PCI和IMO评分(AUC=0.81vs.分别为0.73和0.67)。在多变量Cox分析中,新的术中评分增加1分与无进展(HR:1.06;95%CI:1.03-1.09,p<0.005)和总生存率(HR:1.04;95%CI:1.01-1.07)较差相关,4%和6%,分别。(4)结论:癌症的存在在特定的解剖部位传播,包括小肠系膜,大肠浆膜,和膈腹膜,比整个PCI和IMO评分更能预测CC0和生存率。对这些区域的早期术中评估可能仅揭示CC0是否可实现。与PCI和IMO评分相反,新评分仍可预测不良生存结局.
    BACKGROUND: The Peritoneal Carcinomatosis Index (PCI) and the Intra-operative Mapping for Ovarian Cancer (IMO), to a lesser extent, have been universally validated in advanced-stage epithelial ovarian cancer (EOC) to describe the extent of peritoneal dissemination and are proven to be powerful predictors of the surgical outcome with an added sensitivity of assessment at laparotomy of around 70%. This leaves room for improvement because the two-dimensional anatomic scoring model fails to reflect the patient\'s real anatomy, as seen by a surgeon. We hypothesized that tumor dissemination in specific anatomic locations can be more predictive of complete cytoreduction (CC0) and survival than PCI and IMO tools in EOC patients. (2) Methods: We analyzed prospectively data collected from 508 patients with FIGO-stage IIIB-IVB EOC who underwent cytoreductive surgery between January 2014 and December 2019 at a UK tertiary center. We adapted the structured ESGO ovarian cancer report to provide detailed information on the patterns of tumor dissemination (cancer anatomic fingerprints). We employed the extreme gradient boost (XGBoost) to model only the variables referring to the EOC disseminated patterns, to create an intra-operative score and judge the predictive power of the score alone for complete cytoreduction (CC0). Receiver operating characteristic (ROC) curves were then used for performance comparison between the new score and the existing PCI and IMO tools. We applied the Shapley additive explanations (SHAP) framework to support the feature selection of the narrated cancer fingerprints and provide global and local explainability. Survival analysis was performed using Kaplan-Meier curves and Cox regression. (3) Results: An intra-operative disease score was developed based on specific weights assigned to the cancer anatomic fingerprints. The scores range from 0 to 24. The XGBoost predicted CC0 resection (area under curve (AUC) = 0.88 CI = 0.854-0.913) with high accuracy. Organ-specific dissemination on the small bowel mesentery, large bowel serosa, and diaphragmatic peritoneum were the most crucial features globally. When added to the composite model, the novel score slightly enhanced its predictive value (AUC = 0.91, CI = 0.849-0.963). We identified a \"turning point\", ≤5, that increased the probability of CC0. Using conventional logistic regression, the new score was superior to the PCI and IMO scores for the prediction of CC0 (AUC = 0.81 vs. 0.73 and 0.67, respectively). In multivariate Cox analysis, a 1-point increase in the new intra-operative score was associated with poorer progression-free (HR: 1.06; 95% CI: 1.03-1.09, p < 0.005) and overall survival (HR: 1.04; 95% CI: 1.01-1.07), by 4% and 6%, respectively. (4) Conclusions: The presence of cancer disseminated in specific anatomical sites, including small bowel mesentery, large bowel serosa, and diaphragmatic peritoneum, can be more predictive of CC0 and survival than the entire PCI and IMO scores. Early intra-operative assessment of these areas only may reveal whether CC0 is achievable. In contrast to the PCI and IMO scores, the novel score remains predictive of adverse survival outcomes.
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  • 文章类型: Journal Article
    背景和目的:大约10-15%的高级别浆液性卵巢癌(HGSOC)病例与BRCA种系突变有关。据报道,BRCA1/2种系突变患者的生存率更高,化疗敏感性增加。然而,FIGO分期和组织病理学实体可能是混杂因素.本研究旨在比较接受新辅助化疗(NACT)的晚期HGSOC中有和没有BRCA1/2种系突变的患者的化疗反应和生存率。材料和方法:分析了一组BRCA测试的晚期HGSOC患者在NACT后接受细胞减灭术的化疗反应和生存率。新辅助化疗作为评估化疗对生化(CA125)反应的载体,组织病理学(CRS),生物(传播),和手术(残留疾病)水平。使用化疗反应和生存的单变量和多变量分析。结果:168例患者中有39例具有BRCA½种系突变。在有和没有BRCA½种系突变的患者之间没有观察到组织病理学化疗反应的差异。无论BRCA状态如何,两组患者的生存率相当,CRS2和3(HR7.496,95%CI2.523-22.27,p<0.001&HR4.069,95%CI1.388-11.93,p=0.011),和完全的手术细胞减少(p=0.017)是有利的总生存期的独立参数。结论:有或没有BRCA½种系突变的HGSOC患者,进行了细胞减灭术,显示出相当的化疗反应和随后的生存率。不管BRCA的地位,晚期HGSOC患者具有良好的预后,包括完全的手术细胞减灭术和对化疗的良好组织病理学反应.
    Background and Objectives: Approximately 10−15% of high-grade serous ovarian cancer (HGSOC) cases are related to BRCA germline mutations. Better survival rates and increased chemosensitivity are reported in patients with a BRCA 1/2 germline mutation. However, the FIGO stage and histopathological entity may have been confounding factors. This study aimed to compare chemotherapy response and survival between patients with and without a BRCA 1/2 germline mutation in advanced HGSOC receiving neoadjuvant chemotherapy (NACT). Materials and Methods: A cohort of BRCA-tested advanced HGSOC patients undergoing cytoreductive surgery following NACT was analyzed for chemotherapy response and survival. Neoadjuvant chemotherapy served as a vehicle to assess chemotherapy response on biochemical (CA125), histopathological (CRS), biological (dissemination), and surgical (residual disease) levels. Univariate and multivariate analyses for chemotherapy response and survival were utilized. Results: Thirty-nine out of 168 patients had a BRCA ½ germline mutation. No differences in histopathological chemotherapy response between the patients with and without a BRCA ½ germline mutation were observed. Survival in the groups of patients was comparable Irrespective of the BRCA status, CRS 2 and 3 (HR 7.496, 95% CI 2.523−22.27, p < 0.001 & HR 4.069, 95% CI 1.388−11.93, p = 0.011), and complete surgical cytoreduction (p = 0.017) were independent parameters for a favored overall survival. Conclusions: HGSOC patients with or without BRCA ½ germline mutations, who had cytoreductive surgery, showed comparable chemotherapy responses and subsequent survival. Irrespective of BRCA status, advanced-stage HGSOC patients have a superior prognosis with complete surgical cytoreduction and good histopathological response to chemotherapy.
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  • 文章类型: Journal Article
    (1) Background: Surgical cytoreduction for epithelial ovarian cancer (EOC) is a complex procedure. Encompassed within the performance skills to achieve surgical precision, intra-operative surgical decision-making remains a core feature. The use of eXplainable Artificial Intelligence (XAI) could potentially interpret the influence of human factors on the surgical effort for the cytoreductive outcome in question; (2) Methods: The retrospective cohort study evaluated 560 consecutive EOC patients who underwent cytoreductive surgery between January 2014 and December 2019 in a single public institution. The eXtreme Gradient Boosting (XGBoost) and Deep Neural Network (DNN) algorithms were employed to develop the predictive model, including patient- and operation-specific features, and novel features reflecting human factors in surgical heuristics. The precision, recall, F1 score, and area under curve (AUC) were compared between both training algorithms. The SHapley Additive exPlanations (SHAP) framework was used to provide global and local explainability for the predictive model; (3) Results: A surgical complexity score (SCS) cut-off value of five was calculated using a Receiver Operator Characteristic (ROC) curve, above which the probability of incomplete cytoreduction was more likely (area under the curve [AUC] = 0.644; 95% confidence interval [CI] = 0.598−0.69; sensitivity and specificity 34.1%, 86.5%, respectively; p = 0.000). The XGBoost outperformed the DNN assessment for the prediction of the above threshold surgical effort outcome (AUC = 0.77; 95% [CI] 0.69−0.85; p < 0.05 vs. AUC 0.739; 95% [CI] 0.655−0.823; p < 0.95). We identified “turning points” that demonstrated a clear preference towards above the given cut-off level of surgical effort; in consultant surgeons with <12 years of experience, age <53 years old, who, when attempting primary cytoreductive surgery, recorded the presence of ascites, an Intraoperative Mapping of Ovarian Cancer score >4, and a Peritoneal Carcinomatosis Index >7, in a surgical environment with the optimization of infrastructural support. (4) Conclusions: Using XAI, we explain how intra-operative decisions may consider human factors during EOC cytoreduction alongside factual knowledge, to maximize the magnitude of the selected trade-off in effort. XAI techniques are critical for a better understanding of Artificial Intelligence frameworks, and to enhance their incorporation in medical applications.
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