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基于示例的手术活动检测

Query-by-example surgical activity detection.

作者信息

Gao Yixin, Vedula S Swaroop, Lee Gyusung I, Lee Mija R, Khudanpur Sanjeev, Hager Gregory D

机构信息

Department of Computer Science, Whiting School of Engineering, The Johns Hopkins University, Baltimore, MD, 21218, USA.

Department of Surgery, Johns Hopkins University School of Medicine, Baltimore, MD, 21287, USA.

出版信息

Int J Comput Assist Radiol Surg. 2016 Jun;11(6):987-96. doi: 10.1007/s11548-016-1386-3. Epub 2016 Apr 12.

Abstract

PURPOSE

Easy acquisition of surgical data opens many opportunities to automate skill evaluation and teaching. Current technology to search tool motion data for surgical activity segments of interest is limited by the need for manual pre-processing, which can be prohibitive at scale. We developed a content-based information retrieval method, query-by-example (QBE), to automatically detect activity segments within surgical data recordings of long duration that match a query.

METHODS

The example segment of interest (query) and the surgical data recording (target trial) are time series of kinematics. Our approach includes an unsupervised feature learning module using a stacked denoising autoencoder (SDAE), two scoring modules based on asymmetric subsequence dynamic time warping (AS-DTW) and template matching, respectively, and a detection module. A distance matrix of the query against the trial is computed using the SDAE features, followed by AS-DTW combined with template scoring, to generate a ranked list of candidate subsequences (substrings). To evaluate the quality of the ranked list against the ground-truth, thresholding conventional DTW distances and bipartite matching are applied. We computed the recall, precision, F1-score, and a Jaccard index-based score on three experimental setups. We evaluated our QBE method using a suture throw maneuver as the query, on two tool motion datasets (JIGSAWS and MISTIC-SL) captured in a training laboratory.

RESULTS

We observed a recall of 93, 90 and 87 % and a precision of 93, 91, and 88 % with same surgeon same trial (SSST), same surgeon different trial (SSDT) and different surgeon (DS) experiment setups on JIGSAWS, and a recall of 87, 81 and 75 % and a precision of 72, 61, and 53 % with SSST, SSDT and DS experiment setups on MISTIC-SL, respectively.

CONCLUSION

We developed a novel, content-based information retrieval method to automatically detect multiple instances of an activity within long surgical recordings. Our method demonstrated adequate recall across different complexity datasets and experimental conditions.

摘要

目的

轻松获取手术数据为技能评估和教学自动化带来了诸多机遇。当前用于在手术活动感兴趣的片段中搜索工具运动数据的技术,因需要人工预处理而受到限制,在大规模应用时可能成本过高。我们开发了一种基于内容的信息检索方法——示例查询(QBE),以自动检测与查询匹配的长时间手术数据记录中的活动片段。

方法

感兴趣的示例片段(查询)和手术数据记录(目标试验)是运动学的时间序列。我们的方法包括一个使用堆叠去噪自动编码器(SDAE)的无监督特征学习模块、两个分别基于非对称子序列动态时间规整(AS-DTW)和模板匹配的评分模块,以及一个检测模块。使用SDAE特征计算查询与试验的距离矩阵,随后结合AS-DTW和模板评分,生成候选子序列(子串)的排序列表。为了根据真实情况评估排序列表的质量,应用传统DTW距离阈值化和二分匹配。我们在三种实验设置上计算了召回率、精确率、F1分数和基于杰卡德指数的分数。我们在训练实验室捕获的两个工具运动数据集(JIGSAWS和MISTIC-SL)上,以缝线投掷动作作为查询,评估了我们的QBE方法。

结果

在JIGSAWS数据集上,对于相同外科医生相同试验(SSST)、相同外科医生不同试验(SSDT)和不同外科医生(DS)的实验设置,我们观察到召回率分别为93%、90%和8�%,精确率分别为93%、91%和88%;在MISTIC-SL数据集上,对于SSST、SSDT和DS实验设置,召回率分别为87%、81%和75%,精确率分别为72%、61%和53%。

结论

我们开发了一种新颖的基于内容的信息检索方法,用于自动检测长时间手术记录中一项活动的多个实例。我们的方法在不同复杂度的数据集和实验条件下都展现出了足够的召回率。

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