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机器学习创建了一个简单的内镜分类系统,可提高非专业内镜医师对巴雷特食管发育异常的检测能力。

Machine Learning Creates a Simple Endoscopic Classification System that Improves Dysplasia Detection in Barrett's Oesophagus amongst Non-expert Endoscopists.

作者信息

Sehgal Vinay, Rosenfeld Avi, Graham David G, Lipman Gideon, Bisschops Raf, Ragunath Krish, Rodriguez-Justo Manuel, Novelli Marco, Banks Matthew R, Haidry Rehan J, Lovat Laurence B

机构信息

Department of Gastroenterology, University College London Hospitals NHS Foundation Trust, London, UK.

Research Department for Tissue & Energy, Division of Surgery & Interventional Science, University College London, London, UK.

出版信息

Gastroenterol Res Pract. 2018 Aug 29;2018:1872437. doi: 10.1155/2018/1872437. eCollection 2018.

Abstract

INTRODUCTION

Barrett's oesophagus (BE) is a precursor to oesophageal adenocarcinoma (OAC). Endoscopic surveillance is performed to detect dysplasia arising in BE as it is likely to be amenable to curative treatment. At present, there are no guidelines on who should perform surveillance endoscopy in BE. Machine learning (ML) is a branch of artificial intelligence (AI) that generates simple rules, known as decision trees (DTs). We hypothesised that a DT generated from recognised expert endoscopists could be used to improve dysplasia detection in non-expert endoscopists. To our knowledge, ML has never been applied in this manner.

METHODS

Video recordings were collected from patients with non-dysplastic (ND-BE) and dysplastic Barrett's oesophagus (D-BE) undergoing high-definition endoscopy with enhancement (PENTAX®). A strict protocol was used to record areas of interest after which a corresponding biopsy was taken to confirm the histological diagnosis. In a blinded manner, videos were shown to 3 experts who were asked to interpret them based on their mucosal and microvasculature patterns and presence of nodularity and ulceration as well as overall suspected diagnosis. Data generated were entered into the WEKA package to construct a DT for dysplasia prediction. Non-expert endoscopists (gastroenterology specialist registrars in training with variable experience and undergraduate medical students with no experience) were asked to score these same videos both before and after web-based training using the DT constructed from the expert opinion. Accuracy, sensitivity, and specificity values were calculated before and after training where < 0.05 was statistically significant.

RESULTS

Videos from 40 patients were collected including 12 both before and after acetic acid (ACA) application. Experts' average accuracy for dysplasia prediction was 88%. When experts' answers were entered into a DT, the resultant decision model had a 92% accuracy with a mean sensitivity and specificity of 97% and 88%, respectively. Addition of ACA did not improve dysplasia detection. Untrained medical students tended to have a high sensitivity but poor specificity as they "overcalled" normal areas. Gastroenterology trainees did the opposite with overall low sensitivity but high specificity. Detection improved significantly and accuracy rose in both groups after formal web-based training although it did it reach the accuracy generated by experts. For trainees, sensitivity rose significantly from 71% to 83% with minimal loss of specificity. Specificity rose sharply in students from 31% to 49% with no loss of sensitivity.

CONCLUSION

ML is able to define rules learnt from expert opinion. These generate a simple algorithm to accurately predict dysplasia. Once taught to non-experts, the algorithm significantly improves their rate of dysplasia detection. This opens the door to standardised training and assessment of competence for those who perform endoscopy in BE. It may shorten the learning curve and might also be used to compare competence of trainees with recognised experts as part of their accreditation process.

摘要

引言

巴雷特食管(BE)是食管腺癌(OAC)的癌前病变。进行内镜监测以检测BE中出现的发育异常,因为其可能适合进行根治性治疗。目前,对于谁应该对BE进行监测性内镜检查尚无指南。机器学习(ML)是人工智能(AI)的一个分支,它能生成被称为决策树(DTs)的简单规则。我们假设,由公认的专家内镜医师生成的DT可用于提高非专家内镜医师对发育异常的检测能力。据我们所知,ML从未以这种方式应用过。

方法

收集了接受高清增强内镜检查(宾得®)的非发育异常性(ND - BE)和发育异常性巴雷特食管(D - BE)患者的视频记录。采用严格方案记录感兴趣区域,随后进行相应活检以确认组织学诊断。以盲法将视频展示给3位专家,要求他们根据黏膜和微血管形态、结节及溃疡的存在情况以及总体疑似诊断进行解读。将生成的数据输入到WEKA软件包中以构建用于发育异常预测的DT。要求非专家内镜医师(经验各异的消化内科专科住院医师以及无经验的本科医学生)在基于网络的培训前后,使用根据专家意见构建的DT对这些相同视频进行评分。计算培训前后的准确性、敏感性和特异性值,其中P < 0.05具有统计学意义。

结果

收集了40例患者的视频,其中12例在应用醋酸(ACA)前后均有记录。专家对发育异常预测的平均准确率为88%。当将专家的答案输入到DT中时,所得决策模型的准确率为92%,平均敏感性和特异性分别为97%和88%。添加ACA并未改善发育异常的检测。未经培训的医学生往往敏感性高但特异性差,因为他们“过度判断”正常区域。消化内科实习生则相反,总体敏感性低但特异性高。经过正式的基于网络的培训后,两组的检测均有显著改善且准确率提高,尽管未达到专家所产生的准确率。对于实习生而言,敏感性从71%显著提高到83%,特异性仅有极小损失。学生的特异性从31%急剧上升至49%,敏感性无损失。

结论

ML能够定义从专家意见中学到的规则。这些规则生成一个简单算法以准确预测发育异常。一旦教授给非专家,该算法可显著提高他们对发育异常的检测率。这为BE内镜检查人员的标准化培训和能力评估打开了大门。它可能缩短学习曲线,也可作为认证过程的一部分,用于比较实习生与公认专家的能力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7bf1/6136585/2cdd70a19cba/GRP2018-1872437.001.jpg

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