Suppr超能文献

深度学习计算机视觉算法用于检测肾结石成分。

Deep learning computer vision algorithm for detecting kidney stone composition.

机构信息

Department of Urology, University of Michigan, Ann Arbor, MI, USA.

Department of Computer Science, Princeton University, Princeton, NJ, USA.

出版信息

BJU Int. 2020 Jun;125(6):920-924. doi: 10.1111/bju.15035. Epub 2020 Mar 3.

Abstract

OBJECTIVES

To assess the recall of a deep learning (DL) method to automatically detect kidney stones composition from digital photographs of stones.

MATERIALS AND METHODS

A total of 63 human kidney stones of varied compositions were obtained from a stone laboratory including calcium oxalate monohydrate (COM), uric acid (UA), magnesium ammonium phosphate hexahydrate (MAPH/struvite), calcium hydrogen phosphate dihydrate (CHPD/brushite), and cystine stones. At least two images of the stones, both surface and inner core, were captured on a digital camera for all stones. A deep convolutional neural network (CNN), ResNet-101 (ResNet, Microsoft), was applied as a multi-class classification model, to each image. This model was assessed using leave-one-out cross-validation with the primary outcome being network prediction recall.

RESULTS

The composition prediction recall for each composition was as follows: UA 94% (n = 17), COM 90% (n = 21), MAPH/struvite 86% (n = 7), cystine 75% (n = 4), CHPD/brushite 71% (n = 14). The overall weighted recall of the CNNs composition analysis was 85% for the entire cohort. Specificity and precision for each stone type were as follows: UA (97.83%, 94.12%), COM (97.62%, 95%), struvite (91.84%, 71.43%), cystine (98.31%, 75%), and brushite (96.43%, 75%).

CONCLUSION

Deep CNNs can be used to identify kidney stone composition from digital photographs with good recall. Future work is needed to see if DL can be used for detecting stone composition during digital endoscopy. This technology may enable integrated endoscopic and laser systems that automatically provide laser settings based on stone composition recognition with the goal to improve surgical efficiency.

摘要

目的

评估深度学习(DL)方法自动从结石的数字照片中检测结石成分的召回率。

材料与方法

从结石实验室获得了总共 63 个人类肾结石,包括草酸钙一水合物(COM)、尿酸(UA)、六水合镁铵磷酸氢盐(MAPH/鸟粪石)、二水合磷酸氢钙(CHPD/brushite)和胱氨酸结石。所有结石均至少拍摄了两张结石的图像,包括表面和内部核心。将深度卷积神经网络(CNN)ResNet-101(ResNet,Microsoft)应用于每个图像作为多类分类模型。使用留一交叉验证评估该模型,主要结果是网络预测召回率。

结果

每种成分的成分预测召回率如下:UA 94%(n=17),COM 90%(n=21),MAPH/鸟粪石 86%(n=7),胱氨酸 75%(n=4),CHPD/brushite 71%(n=14)。CNN 对结石成分分析的总体加权召回率为整个队列的 85%。每种结石类型的特异性和精度如下:UA(97.83%,94.12%),COM(97.62%,95%),鸟粪石(91.84%,71.43%),胱氨酸(98.31%,75%)和 brushite(96.43%,75%)。

结论

深度 CNN 可用于从数字照片中识别肾结石成分,召回率较高。未来需要进一步研究是否可以在数字内窥镜检查中使用 DL 来检测结石成分。这项技术可以使集成的内窥镜和激光系统自动根据结石成分识别提供激光设置,目标是提高手术效率。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验