改进食道运动障碍人工计量诊断的人工智能工具。

Q1 Medicine Current Gastroenterology Reports Pub Date : 2024-04-01 Epub Date: 2024-02-07 DOI:10.1007/s11894-024-00921-z
Ofer Fass, Benjamin D Rogers, C Prakash Gyawali
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引用次数: 0

摘要

审查的目的:人工智能(AI)是一个广义的术语,指计算机在解释大型数据集时模仿甚至超越人类智能的能力。与息肉检测和组织病理学解读等其他领域相比,人工智能在胃肠道运动方面的应用较为缓慢:在食管生理检测中,人工智能可以自动解读基于图像的检测,尤其是高分辨率测压(HRM)和功能性管腔成像探针(FLIP)研究。基本任务,如识别地标、确定高分辨率测压研究的适当性以及识别贲门失弛缓症与非贲门失弛缓症模式等,都能准确无误地完成。然而,现有的人工智能系统将人工智能解释与专家分析进行比较,而不是与基于人工智能诊断的临床管理结果进行比较。在非卧床反流监测领域,人工智能方法的使用要落后得多,因为在多阻抗和 pH 值通道数据同化方面存在挑战。人工智能在食道生理测试方面的成功经验仍有可能推广到肛门直肠的 HRM,以及评估胃电活动和运动功能的创新方法。人工智能的使用具有巨大的潜力,可以通过食管生理检测改善对食管以及胃肠道其他区域运动障碍的检测。最终,将患者的表现、人口统计学特征和替代测试结果整合到个体运动测试解读中,将提高人工智能工具的诊断精确度和预后效果。
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Artificial Intelligence Tools for Improving Manometric Diagnosis of Esophageal Dysmotility.

Purpose of review: Artificial intelligence (AI) is a broad term that pertains to a computer's ability to mimic and sometimes surpass human intelligence in interpretation of large datasets. The adoption of AI in gastrointestinal motility has been slower compared to other areas such as polyp detection and interpretation of histopathology.

Recent findings: Within esophageal physiologic testing, AI can automate interpretation of image-based tests, especially high resolution manometry (HRM) and functional luminal imaging probe (FLIP) studies. Basic tasks such as identification of landmarks, determining adequacy of the HRM study and identification from achalasia from non-achalasia patterns are achieved with good accuracy. However, existing AI systems compare AI interpretation to expert analysis rather than to clinical outcome from management based on AI diagnosis. The use of AI methods is much less advanced within the field of ambulatory reflux monitoring, where challenges exist in assimilation of data from multiple impedance and pH channels. There remains potential for replication of the AI successes within esophageal physiologic testing to HRM of the anorectum, and to innovative and novel methods of evaluating gastric electrical activity and motor function. The use of AI has tremendous potential to improve detection of dysmotility within the esophagus using esophageal physiologic testing, as well as in other regions of the gastrointestinal tract. Eventually, integration of patient presentation, demographics and alternate test results to individual motility test interpretation will improve diagnostic precision and prognostication using AI tools.

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来源期刊
Current Gastroenterology Reports
Current Gastroenterology Reports Medicine-Gastroenterology
CiteScore
7.80
自引率
0.00%
发文量
19
期刊介绍: As the field of gastroenterology and hepatology rapidly evolves, the wealth of published literature can be overwhelming. The aim of the journal is to help readers stay abreast of such advances by offering authoritative, systematic reviews by leading experts. We accomplish this aim by appointing Section Editors who invite international experts to contribute review articles that highlight recent developments and important papers published in the past year. Major topics in gastroenterology are covered, including pediatric gastroenterology, neuromuscular disorders, infections, nutrition, and inflammatory bowel disease. These reviews provide clear, insightful summaries of expert perspectives relevant to clinical practice. An Editorial Board of internationally diverse members suggests topics of special interest to their country/region and ensures that topics are current and include emerging research. We also provide commentaries from well-known figures in the field.
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