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用于功能性管腔成像探头力学(MechView)的软件框架。

A Software Framework for the Functional Lumen Imaging Probe-Mechanics (MechView).

作者信息

Halder Sourav, Kou Wenjun, Goudie Eric, Kahrilas Peter J, Patankar Neelesh A, Carlson Dustin A, Pandolfino John E

机构信息

Division of Gastroenterology and Hepatology, Department of Medicine, Feinberg School of Medicine, Kenneth C. Griffin Esophageal Center, Northwestern Medicine, Northwestern University, Chicago, Illinois, USA.

Department of Mechanical Engineering, McCormick School of Engineering, Northwestern University, Evanston, Illinois, USA.

出版信息

Neurogastroenterol Motil. 2025 Feb;37(2):e14981. doi: 10.1111/nmo.14981. Epub 2024 Dec 13.

Abstract

BACKGROUND

The functional lumen imaging probe (FLIP) has proven to be a versatile device for diagnosing esophageal motility disorders and estimating esophageal wall compliance, but there is a lack of viable software for quantitative assessment of FLIP measurements.

METHODS

A Python-based web framework was developed for a unified assessment of FLIP measurements including clinical metrics such as esophagogastric junction (EGJ) distensibility index (DI), maximum EGJ opening diameter, mechanics-based metrics for estimating strength, and effectiveness of contractions, such as contraction power and displaced volume, and machine learning-based clustering and predictive algorithms such as the virtual disease landscape (VDL) and EGJ obstruction probability. The clinical and VDL probability metrics were then validated using FLIP data from 121 subjects constituting different categories of EGJ opening which were diagnosed by expert clinicians.

RESULTS

The clinical metrics estimated by the framework matched the manual diagnosis of the clinicians. Misclassifications were minimal and were mostly between neighboring groups, that is, normal and borderline normal or borderline normal and borderline reduced EGJ opening. Similar results were also obtained for the VDL probability metrics. The misclassifications were further analyzed by clinicians and approved.

CONCLUSION

The FLIP web framework was developed and validated to reliably estimate various clinical, mechanical, and machine learning-based metrics for diagnosing esophageal motility disorders.

摘要

背景

功能性管腔成像探头(FLIP)已被证明是一种用于诊断食管动力障碍和评估食管壁顺应性的多功能设备,但缺乏用于定量评估FLIP测量结果的可行软件。

方法

开发了一个基于Python的网络框架,用于统一评估FLIP测量结果,包括临床指标,如食管胃交界(EGJ)扩张指数(DI)、EGJ最大开口直径、基于力学的用于估计收缩强度和有效性的指标,如收缩力和移位体积,以及基于机器学习的聚类和预测算法,如虚拟疾病图谱(VDL)和EGJ梗阻概率。然后,使用来自121名构成不同EGJ开口类别的受试者的FLIP数据对临床和VDL概率指标进行验证,这些受试者由专家临床医生诊断。

结果

该框架估计的临床指标与临床医生的手动诊断结果相符。错误分类极少,且大多发生在相邻组之间,即正常与临界正常或临界正常与临界EGJ开口减小之间。VDL概率指标也获得了类似结果。临床医生对错误分类进行了进一步分析并认可。

结论

开发并验证了FLIP网络框架,以可靠地估计用于诊断食管动力障碍的各种临床、力学和基于机器学习的指标。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/dc16/11748822/70be4e2ea5f1/NMO-37-e14981-g003.jpg

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