通过YOLOv5对卢旺达围手术期流程进行手写文本和数字分类

Navya Annapareddy, Kara Fallin, Ryan Folks, W. Jarrard, Marcel Durieux, Nazanin Moradinasab, B. Naik, S. Sengupta, Christian Ndaribitse, Donald Brown
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摘要

非洲手术结果研究是一项为期7天的前瞻性观察队列研究,涉及非洲25个国家,报告严重术后并发症发生率为18%,死亡率为2%[1]。95%的死亡发生在术后,被认为是可以预防的。影响术后预后的因素有很多,但减少并发症的一个关键方法是根据围手术期参数预测患者预后轨迹的能力[2]。为了有效地预测这些结果,需要电子病历系统。与手写的纸质记录相比,这些系统具有深刻的优势,包括医疗信息的自动传输、动态搜索查询和数据备份的改进弹性。在本文中,我们实现了来自卢旺达基加利大学教学医院的363张手写围手术期流程的药物和生理指标部分的数字化。在这两个部分中,手写单词和数字的检测都是使用在单个类上训练的YOLOv5模型完成的。然后用卷积神经网络(CNN)对边界框进行裁剪和分类。实验结果表明,我们的方法可以成功地检测手写数字和单词,并对目标平均精度(mAP)进行了评估。
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Handwritten Text and Digit Classification on Rwandan Perioperative Flowsheets via YOLOv5
The African Surgical Outcomes Study, a seven-day, prospective, observational cohort study across 25 countries in Africa reported a rate of serious postoperative complications of 18% and mortality of 2% [1]. 95% of these deaths occurred in the postoperative period and were considered preventable. There are many factors that contribute to postoperative outcomes, but a key approach to decreasing complications is the ability to predict patient outcome trajectories from perioperative parameters [2]. In order to efficiently predict these outcomes, electronic medical record systems are needed. As compared to handwritten paper records, these systems offer profound advantages, including automated transfer of medical information, dynamic search queries, and improved resilience for data backups. In this paper, we implement the digitization of the drug and physiological indicator portions of 363 handwritten perioperative flowsheets sourced from the University Teaching Hospital of Kigali in Rwanda. In both sections, the detection of handwritten words and digits is accomplished using a YOLOv5 model trained on a single class. The bounding boxes are then cropped and classified by a convolutional neural network (CNN). Our experimental results suggest that our proposed method can successfully detect handwritten digits and words as evaluated on object mean average precision (mAP).
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