外科洞察力引导的深度学习在结直肠病变管理中的应用。

Ozan Can Tatar, Anil Çubukçu
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引用次数: 0

摘要

背景:结肠镜检查是识别胃肠道疾病,包括潜在恶性肿瘤的关键诊断工具。然而,在视觉检查过程中,该程序在精确识别病变方面面临挑战。人工智能和机器学习技术的最新进展为增强医学成像分析开辟了道路,包括在结肠镜检查领域。方法:在本研究中,我们开发并评估了一种深度学习(DL)模型ColoNet,用于检测结肠镜图像中的病变。我们分析了2009年至2022年间306例接受结直肠手术的患者的1760张图像,符合特定的纳入标准。这些图像用于训练和验证ColoNet,采用YOLOv8架构和各种数据增强技术。通过YOLO架构评估深度学习指标,并通过敏感性、特异性、阳性预测值和阴性预测值评估训练模型的诊断准确性。结果:我们的验证数据集的结果显示精度为0.79604,召回率为0.78086,mAP50为0.83243,mAP50-95为0.4439。此外,在包含健康和可疑病变的91张图像的单独实时数据集上,ColoNet的灵敏度为70.73%,特异性为92.00%,阳性预测值(PPV)为87.88%,阴性预测值(NPV)为79.31%。正、负似然比分别为8.84和0.32,总体准确率为82.42%。结论:总之,我们的模型显示了有希望的结果,表明它有潜力作为辅助外科医生进行结肠镜检查的有价值的工具。它能够发现潜在恶性肿瘤的可疑病变,为结直肠癌的早期诊断和治疗提供了显著的进步。需要进一步的多中心前瞻性研究和验证,以充分发挥其临床适用性和影响。
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Surgical Insight-guided Deep Learning for Colorectal Lesion Management.

Background: Colonoscopy stands as a pivotal diagnostic tool in identifying gastrointestinal diseases, including potentially malignant tumors. The procedure, however, faces challenges in the precise identification of lesions during visual inspections. The recent strides in AI and machine learning technologies have opened avenues for enhanced medical imaging analysis, including in the field of colonoscopy.

Methods: In this study, we developed and evaluated a deep learning (DL) model, ColoNet, for detecting lesions in colonoscopic images. We analyzed 1760 images from 306 patients who underwent colorectal surgery between 2009 and 2022, meeting specific inclusion criteria. These images were used to train and validate ColoNet, employing the YOLOv8 architecture and various data augmentation techniques. Deep learning metrics are assessed via YOLO architecture and trained model diagnostic accuracy was assessed via sensitivity, specifity, positive predictive value, and negative predictive value.

Results: Our results from the validation dataset revealed a precision of 0.79604, a recall of 0.78086, an mAP50 of 0.83243, and an mAP50-95 of 0.4439. In addition, on a separate real-time dataset of 91 images consisting both healthy and suspect lesions, ColoNet achieved a sensitivity of 70.73%, specificity of 92.00%, positive predictive value (PPV) of 87.88%, and negative predictive value (NPV) of 79.31%. The positive and negative likelihood ratios were 8.84 and 0.32, respectively, with an overall accuracy of 82.42%.

Conclusions: In conclusion, our model has demonstrated promising results, indicating its potential as a valuable tool to assist surgeons during colonoscopy procedures. Its ability to detect suspicious lesions with potential malignancy offers a noteworthy advancement in the early diagnosis and management of colorectal cancers. Further multicentric, prospective research and validation are warranted to fully realize its clinical applicability and impact.

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来源期刊
CiteScore
2.00
自引率
10.00%
发文量
103
审稿时长
3-8 weeks
期刊介绍: Surgical Laparoscopy Endoscopy & Percutaneous Techniques is a primary source for peer-reviewed, original articles on the newest techniques and applications in operative laparoscopy and endoscopy. Its Editorial Board includes many of the surgeons who pioneered the use of these revolutionary techniques. The journal provides complete, timely, accurate, practical coverage of laparoscopic and endoscopic techniques and procedures; current clinical and basic science research; preoperative and postoperative patient management; complications in laparoscopic and endoscopic surgery; and new developments in instrumentation and technology.
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