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Methodology to develop machine learning algorithms to improve performance in gastrointestinal endoscopy

机译:开发机器学习算法以改善胃肠道内窥镜检查性能的方法

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摘要

Assisted diagnosis using artificial intelligence has been a holy grail in medical research for many years, and recent developments in computer hardware have enabled the narrower area of machine learning to equip clinicians with potentially useful tools for computer assisted diagnosis (CAD) systems. However, training and assessing a computer’s ability to diagnose like a human are complex tasks, and successful outcomes depend on various factors. We have focused our work on gastrointestinal (GI) endoscopy because it is a cornerstone for diagnosis and treatment of diseases of the GI tract. About 2.8 million luminal GI (esophageal, stomach, colorectal) cancers are detected globally every year, and although substantial technical improvements in endoscopes have been made over the last 10-15 years, a major limitation of endoscopic examinations remains operator variation. This translates into a substantial inter-observer variation in the detection and assessment of mucosal lesions, causing among other things an average polyp miss-rate of 20% in the colon and thus the subsequent development of a number of post-colonoscopy colorectal cancers. CAD systems might eliminate this variation and lead to more accurate diagnoses. In this editorial, we point out some of the current challenges in the development of efficient computer-based digital assistants. We give examples of proposed tools using various techniques, identify current challenges, and give suggestions for the development and assessment of future CAD systems.
机译:多年来,使用人工智能辅助诊断一直是医学研究中的圣杯,计算机硬件的最新发展使机器学习的范围缩小,从而为临床医生配备了可能有用的计算机辅助诊断(CAD)系统工具。但是,训练和评估计算机像人一样进行诊断的能力是复杂的任务,成功的结果取决于多种因素。我们将其重点放在胃肠道(GI)内窥镜检查上,因为它是诊断和治疗胃肠道疾病的基石。每年在全球范围内检测到约280万腔GI(食道癌,胃癌,结直肠癌)癌症,尽管在过去10到15年中内窥镜技术已经取得了实质性的进步,但内窥镜检查的主要局限性仍然在于操作员。这转化为观察者之间在粘膜病变的检测和评估中的显着差异,除其他因素外,结肠中的息肉漏诊率平均为20%,并因此导致了结肠镜检查后结直肠癌的发展。 CAD系统可能会消除这种差异并导致更准确的诊断。在这篇社论中,我们指出了在开发基于计算机的高效数字助理方面当前面临的一些挑战。我们使用各种技术给出了建议的工具示例,确定了当前面临的挑战,并为开发和评估未来的CAD系统提供了建议。

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