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Automatic content analysis of endoscopy video (Endoscopic Multimedia Information System).

机译:内窥镜视频的自动内容分析(内窥镜多媒体信息系统)。

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摘要

Advances in video technology are being incorporated into today's healthcare practice. For example, various types of endoscopes are used for colonoscopy, upper gastrointestinal endoscopy, enteroscopy, bronchoscopy, cystoscopy, laparoscopy, and some minimal invasive surgeries (i.e., video endoscopic neurosurgery). These endoscopes come in various sizes, but all have a tiny video camera at the tip of the endoscopes. During an endoscopic procedure, the tiny video camera generates a video signal of the interior of the human organ, for example, the internal mucosa of the colon. The video data are displayed on a monitor for real-time analysis by the physician. Diagnosis, biopsy and therapeutic operations can be performed during the procedure. We define endoscopy videos as digital videos captured during endoscopic procedures.; Despite a large body of knowledge in medical image analysis, endoscopy videos are not systematically captured for real-time or post-procedure reviews and analyses. No hardware and software tools have been developed to capture, analyze, and provide user-friendly and efficient access to important content on such videos. To address this problem, a project has been proposed to develop an Endoscopic Multimedia Information System (EMIS) which captures high quality endoscopy videos, analyzes the captured videos for important contents, and provides efficient access to these contents.; In this dissertation, we focus on the automatic analysis techniques of endoscopy videos for important contents by presenting (1) object & frame recognition, (2) multi-level endoscopy video segmentation and (3) application for endoscopy video analysis (Measurement of Endoscopy Quality). To analyze the contents of endoscopy videos, we first propose three object & frame recognition algorithm: Endoscopy Video Frame Classification, Lumen Identification and Polyp Detection.; The problem of segmenting visual data into smaller chunks is a basic problem in multimedia analysis, and its solution helps in problems such as video indexing and retrieval. However, traditional video segmentation techniques are not suitable for segmenting endoscopy video because endoscopy videos are generated by a single camera operation without shot, which makes it difficult to manage and analyze them. To address this problem, I propose a novel algorithm of multi-level segmentation for endoscopy video, which represents the semantic structure of endoscopy video: Video, Phase, Piece, and Objective Shot.; Based on the information obtained by object & frame recognition and multi-level endoscopy video segmentation, we develop software tool to measure the quality of endoscopic procedure. The development of software tool will directly benefit endoscopic research, education, and training: especially for the research-based advanced training of students in graduate and undergraduate programs in medical informatics.
机译:视频技术的进步已被纳入当今的医疗保健实践中。例如,各种类型的内窥镜用于结肠镜检查,上消化道内窥镜检查,肠镜检查,支气管镜检查,膀胱镜检查,腹腔镜检查和一些微创手术(即,视频内窥镜神经外科手术)。这些内窥镜有各种尺寸,但是内窥镜尖端都装有一个微型摄像机。在内窥镜检查过程中,微型摄像机会产生人体器官内部的视频信号,例如结肠的内部粘膜。视频数据显示在监视器上,供医生进行实时分析。可以在手术过程中进行诊断,活检和治疗操作。我们将内窥镜检查视频定义为在内窥镜检查过程中捕获的数字视频。尽管在医学图像分析方面具有丰富的知识,但仍无法系统地捕获内窥镜视频以进行实时或过程后的检查和分析。还没有开发任何硬件和软件工具来捕获,分析此类视频中的重要内容并提供用户友好和有效的访问。为了解决这个问题,已经提出了一个开发内窥镜多媒体信息系统(EMIS)的项目,该系统可以捕获高质量的内窥镜视频,分析捕获的视频中的重要内容,并提供对这些内容的有效访问。本文主要介绍(1)对象和帧识别,(2)多级内窥镜视频分割和(3)内窥镜视频分析的应用(内窥镜质量测量) )。为了分析内窥镜视频的内容,我们首先提出三种对象和帧识别算法:内窥镜视频帧分类,流明识别和息肉检测。将视觉数据分割成较小的块的问题是多媒体分析中的一个基本问题,其解决方案有助于解决诸如视频索引和检索之类的问题。然而,传统的视频分割技术不适用于分割内窥镜视频,因为内窥镜视频是由单个相机操作生成而没有拍摄的,这使得难以对其进行管理和分析。为了解决这个问题,我提出了一种新型的内窥镜视频多层次分割算法,该算法代表了内窥镜视频的语义结构:视频,相位,片段和物镜。基于对象和帧识别以及多级内窥镜视频分割所获得的信息,我们开发了用于测量内窥镜检查过程质量的软件工具。软件工具的开发将直接使内窥镜的研究,教育和培训受益,尤其是对于基于研究的医学信息学研究生和本科课程的学生进行的高级培训。

著录项

  • 作者

    Hwang, Sae.;

  • 作者单位

    The University of Texas at Arlington.;

  • 授予单位 The University of Texas at Arlington.;
  • 学科 Engineering Biomedical.; Computer Science.
  • 学位 Ph.D.
  • 年度 2007
  • 页码 122 p.
  • 总页数 122
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物医学工程;自动化技术、计算机技术;
  • 关键词

  • 入库时间 2022-08-17 11:40:11

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