Jell Alissa, Kuttler Christina, Ostler Daniel, Hüser Norbert
Department of Surgery, Medical Faculty, University Hospital Klinikum rechts der Isar, Technical University of Munich, Munich, Germany.
M6 - Mathematical Modelling, Mathematical Faculty, Technical University of Munich, Munich, Germany.
Visc Med. 2020 Dec;36(6):439-442. doi: 10.1159/000511931. Epub 2020 Nov 4.
Esophageal motility disorders have a severe impact on patients' quality of life. While high-resolution manometry (HRM) is the gold standard in the diagnosis of esophageal motility disorders, intermittently occurring muscular deficiencies often remain undiscovered if they do not lead to an intense level of discomfort or cause suffering in patients. Ambulatory long-term HRM allows us to study the circadian (dys)function of the esophagus in a unique way. With the prolonged examination period of 24 h, however, there is an immense increase in data which requires personnel and time for evaluation not available in clinical routine. Artificial intelligence (AI) might contribute here by performing an autonomous analysis.
On the basis of 40 previously performed and manually tagged long-term HRM in patients with suspected temporary esophageal motility disorders, we implemented a supervised machine learning algorithm for automated swallow detection and classification.
For a set of 24 h of long-term HRM by means of this algorithm, the evaluation time could be reduced from 3 days to a core evaluation time of 11 min for automated swallow detection and clustering plus an additional 10-20 min of evaluation time, depending on the complexity and diversity of motility disorders in the examined patient. In 12.5% of patients with suggested esophageal motility disorders, AI-enabled long-term HRM was able to reveal new and relevant findings for subsequent therapy.
This new approach paves the way to the clinical use of long-term HRM in patients with temporary esophageal motility disorders and might serve as an ideal and clinically relevant application of AI.
食管动力障碍对患者的生活质量有严重影响。虽然高分辨率测压法(HRM)是诊断食管动力障碍的金标准,但间歇性出现的肌肉功能缺陷如果没有导致患者强烈不适或痛苦,往往仍未被发现。动态长期HRM使我们能够以独特的方式研究食管的昼夜(功能)。然而,随着24小时的检查时间延长,数据量大幅增加,这需要临床常规中没有的人力和时间来进行评估。人工智能(AI)可能通过进行自主分析在此方面发挥作用。
基于40例先前对疑似暂时性食管动力障碍患者进行的并经人工标记的长期HRM,我们实施了一种监督式机器学习算法,用于自动吞咽检测和分类。
通过该算法对一组24小时的长期HRM进行分析,自动吞咽检测和聚类的评估时间可从3天缩短至核心评估时间11分钟,另外根据被检查患者动力障碍的复杂性和多样性,还需额外10 - 20分钟的评估时间。在12.5%提示有食管动力障碍的患者中,启用AI的长期HRM能够揭示对后续治疗有新的且相关的发现。
这种新方法为在暂时性食管动力障碍患者中临床应用长期HRM铺平了道路,并且可能成为AI理想的、与临床相关的应用。