使用新型智能马桶对粪便进行长期自动监测:可行性研究

IF 3.5 3区 医学 Q1 CLINICAL NEUROLOGY
Jin Zhou, Yuying Luo, Julia W Darcy, Kyle J Lafata, Jose R Ruiz, Sonia Grego
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引用次数: 0

摘要

背景:患者对排便一致性的报告并不可靠。我们展示了使用新型智能马桶长期自动收集粪便图像数据的可行性,并评估了根据布里斯托尔粪便形态量表(BSFS)评估粪便形态的确定性计算机视觉分析方法:方法:我们的智能马桶将传统马桶与工程门户集成在一起,以便在冲水后对管道预定区域内的粪便进行成像。智能马桶安装在一个工作场所的卫生间内,由六名健康志愿者使用。三位专家对图像进行了标注。开发了一种基于深度学习分割和数学定义的手工创建特征的计算机视觉方法,以量化图像中粪便的形态属性:在平均 10 个月的时间里,共记录了 6 名受试者的 474 张排便图像。3%的图像被评为异常,粪便一致性为 BSFS 2,4% 为 BSFS 6。我们的图像分析算法利用了可解释的形态特征,对异常粪便形态进行了分类,准确率为 94%,灵敏度为 81%,特异性为 95%:我们的研究证实了使用新型智能马桶系统进行长期、无创自动粪便形态监测的可行性和准确性,该系统可消除患者追踪肠道形态的负担。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Long-term, automated stool monitoring using a novel smart toilet: A feasibility study.

Background: Patients' report of bowel movement consistency is unreliable. We demonstrate the feasibility of long-term automated stool image data collection using a novel Smart Toilet and evaluate a deterministic computer-vision analytic approach to assess stool form according to the Bristol Stool Form Scale (BSFS).

Methods: Our smart toilet integrates a conventional toilet bowl with an engineered portal to image feces in a predetermined region of the plumbing post-flush. The smart toilet was installed in a workplace bathroom and used by six healthy volunteers. Images were annotated by three experts. A computer vision method based on deep learning segmentation and mathematically defined hand-crafted features was developed to quantify morphological attributes of stool from images.

Key results: 474 bowel movements images were recorded in total from six subjects over a mean period of 10 months. 3% of images were rated abnormal with stool consistency BSFS 2 and 4% were BSFS 6. Our image analysis algorithm leverages interpretable morphological features and achieves classification of abnormal stool form with 94% accuracy, 81% sensitivity and 95% specificity.

Conclusions: Our study supports the feasibility and accuracy of long-term, non-invasive automated stool form monitoring with the novel smart toilet system which can eliminate the patient burden of tracking bowel forms.

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来源期刊
Neurogastroenterology and Motility
Neurogastroenterology and Motility 医学-临床神经学
CiteScore
7.80
自引率
8.60%
发文量
178
审稿时长
3-6 weeks
期刊介绍: Neurogastroenterology & Motility (NMO) is the official Journal of the European Society of Neurogastroenterology & Motility (ESNM) and the American Neurogastroenterology and Motility Society (ANMS). It is edited by James Galligan, Albert Bredenoord, and Stephen Vanner. The editorial and peer review process is independent of the societies affiliated to the journal and publisher: Neither the ANMS, the ESNM or the Publisher have editorial decision-making power. Whenever these are relevant to the content being considered or published, the editors, journal management committee and editorial board declare their interests and affiliations.
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