开发和验证用于胶囊内窥镜小肠病变检测的深度学习系统:在新加坡一家机构进行的试点研究。

Singapore medical journal Pub Date : 2024-03-01 Epub Date: 2024-03-26 DOI:10.4103/singaporemedj.SMJ-2023-187
Bochao Jiang, Michael Dorosan, Justin Wen Hao Leong, Marcus Eng Hock Ong, Sean Shao Wei Lam, Tiing Leong Ang
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摘要

简介深度学习模型可以评估图像质量,并对小肠胶囊内窥镜检查(CE)中的异常情况进行鉴别,从而减少疲劳和诊断所需的时间。这些模型可作为决策支持系统,通过对异常情况进行概率预测,实现诊断过程的部分自动化:我们展示了深度学习模型在 CE 图像分析中的应用,特别是通过试用肠道准备模型 (BPM) 和异常检测模型 (ADM),分别确定帧级视图质量和异常发现的存在。我们使用基于卷积神经网络的模型在大规模开放域数据上进行预训练,以提取 CE 图像的空间特征,然后将其用于密集前馈神经网络分类器。然后,我们将开源的 Kvasir-Capsule 数据集(n = 43)和本地收集的 CE 数据(n = 29)结合起来:对 BPM 和 ADM 分别使用平均五倍和两倍交叉验证对模型性能进行了比较。基于预训练的 ResNet50 架构的最佳 BPM 模型的接收者操作特征曲线下面积和精确度-召回曲线下面积分别为 0.969±0.008 和 0.843±0.041。同样基于 ResNet50 的最佳 ADM 模型的前 1 级和前 2 级精确度分别为 84.03±0.051 和 94.78±0.028。这些模型每秒可处理约 200-250 张图像,并对出血等时间紧迫的异常情况表现出良好的辨别能力:我们的试验模型显示了在 CE 工作流程中缩短诊断时间的潜力。据我们所知,我们的方法在新加坡是独一无二的。我们可以根据临床医生现有的工作流程和资源限制,以务实的方式进一步评估我们工作的价值。
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Development and validation of a deep learning system for detection of small bowel pathologies in capsule endoscopy: a pilot study in a Singapore institution.

Introduction: Deep learning models can assess the quality of images and discriminate among abnormalities in small bowel capsule endoscopy (CE), reducing fatigue and the time needed for diagnosis. They serve as a decision support system, partially automating the diagnosis process by providing probability predictions for abnormalities.

Methods: We demonstrated the use of deep learning models in CE image analysis, specifically by piloting a bowel preparation model (BPM) and an abnormality detection model (ADM) to determine frame-level view quality and the presence of abnormal findings, respectively. We used convolutional neural network-based models pretrained on large-scale open-domain data to extract spatial features of CE images that were then used in a dense feed-forward neural network classifier. We then combined the open-source Kvasir-Capsule dataset (n = 43) and locally collected CE data (n = 29).

Results: Model performance was compared using averaged five-fold and two-fold cross-validation for BPMs and ADMs, respectively. The best BPM model based on a pre-trained ResNet50 architecture had an area under the receiver operating characteristic and precision-recall curves of 0.969±0.008 and 0.843±0.041, respectively. The best ADM model, also based on ResNet50, had top-1 and top-2 accuracies of 84.03±0.051 and 94.78±0.028, respectively. The models could process approximately 200-250 images per second and showed good discrimination on time-critical abnormalities such as bleeding.

Conclusion: Our pilot models showed the potential to improve time to diagnosis in CE workflows. To our knowledge, our approach is unique to the Singapore context. The value of our work can be further evaluated in a pragmatic manner that is sensitive to existing clinician workflow and resource constraints.

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