胰腺浆液性囊性瘤的自然史和生长预测模型

IF 2.8 2区 医学 Q2 GASTROENTEROLOGY & HEPATOLOGY
Jenny H. Chang , Breanna C. Perlmutter , Chase Wehrle , Robert Naples , Kathryn Stackhouse , John McMichael , Tu Chao , Samer Naffouje , Toms Augustin , Daniel Joyce , Robert Simon , R Matthew Walsh
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引用次数: 0

摘要

目的:浆液性囊性瘤(SCN)是一种良性胰腺囊性瘤,根据局部并发症和生长速度可能需要进行切除。我们的目标是建立一个 SCN 生长曲线预测模型,以帮助临床决策确定是否需要手术切除:方法:利用一家医疗机构前瞻性维护的胰腺囊肿数据库,确定 SCN 患者。诊断确认包括影像学、囊肿抽吸、病理学或专家意见。囊肿直径由放射学或手术测量。诊断间隔时间≥3个月的患者也包括在内。利用灵活的受限三次样条对时间和先前测量的非线性进行建模。模型拟合和分析使用 R (V3.50, Vienna, Austria) 和 rms 软件包进行:在 1998 年至 2021 年的 203 名符合条件的患者中,初始囊肿的平均大小为 31 毫米(范围为 5-160 毫米),平均随访时间为 72 个月(范围为 3-266 个月)。该模型有效捕捉到了囊肿大小与时间之间的非线性关系,时间和既往囊肿大小(而非初始囊肿大小)都能显著预测当前囊肿的生长情况(p 结论:囊肿大小与囊肿生长情况之间存在相似的关系:无论初始囊肿大小如何,SCN 通常都有相似的生长速度。准确的预测模型可用于识别可能需要手术干预的快速生长异常值,这种免费模型 (https://riskcalc.org/SerousCystadenomaSize/) 可纳入电子病历中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Natural history and growth prediction model of pancreatic serous cystic neoplasms

Objective

Serous cystic neoplasms (SCN) are benign pancreatic cystic neoplasms that may require resection based on local complications and rate of growth. We aimed to develop a predictive model for the growth curve of SCNs to aid in the clinical decision making of determining need for surgical resection.

Methods

Utilizing a prospectively maintained pancreatic cyst database from a single institution, patients with SCNs were identified. Diagnosis confirmation included imaging, cyst aspiration, pathology, or expert opinion. Cyst size diameter was measured by radiology or surgery. Patients with interval imaging ≥3 months from diagnosis were included. Flexible restricted cubic splines were utilized for modeling of non-linearities in time and previous measurements. Model fitting and analysis were performed using R (V3.50, Vienna, Austria) with the rms package.

Results

Among 203 eligible patients from 1998 to 2021, the mean initial cyst size was 31 mm (range 5–160 mm), with a mean follow-up of 72 months (range 3–266 months). The model effectively captured the non-linear relationship between cyst size and time, with both time and previous cyst size (not initial cyst size) significantly predicting current cyst growth (p < 0.01). The root mean square error for overall prediction was 10.74. Validation through bootstrapping demonstrated consistent performance, particularly for shorter follow-up intervals.

Conclusion

SCNs typically have a similar growth rate regardless of initial size. An accurate predictive model can be used to identify rapidly growing outliers that may warrant surgical intervention, and this free model (https://riskcalc.org/SerousCystadenomaSize/) can be incorporated in the electronic medical record.

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来源期刊
Pancreatology
Pancreatology 医学-胃肠肝病学
CiteScore
7.20
自引率
5.60%
发文量
194
审稿时长
44 days
期刊介绍: Pancreatology is the official journal of the International Association of Pancreatology (IAP), the European Pancreatic Club (EPC) and several national societies and study groups around the world. Dedicated to the understanding and treatment of exocrine as well as endocrine pancreatic disease, this multidisciplinary periodical publishes original basic, translational and clinical pancreatic research from a range of fields including gastroenterology, oncology, surgery, pharmacology, cellular and molecular biology as well as endocrinology, immunology and epidemiology. Readers can expect to gain new insights into pancreatic physiology and into the pathogenesis, diagnosis, therapeutic approaches and prognosis of pancreatic diseases. The journal features original articles, case reports, consensus guidelines and topical, cutting edge reviews, thus representing a source of valuable, novel information for clinical and basic researchers alike.
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