使用基于图像的直肠癌 TNM 分期和预后参数的人工智能研究中的性能报告设计:系统综述。

IF 3 Q2 GASTROENTEROLOGY & HEPATOLOGY Annals of Coloproctology Pub Date : 2024-02-01 Epub Date: 2024-02-28 DOI:10.3393/ac.2023.00892.0127
Minsung Kim, Taeyong Park, Bo Young Oh, Min Jeong Kim, Bum-Joo Cho, Il Tae Son
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引用次数: 0

摘要

目的:人工智能(AI)与直肠癌磁共振成像的结合有望通过识别微妙的模式、帮助肿瘤分界和淋巴结评估来提高诊断的准确性。根据我们以卷积神经网络为重点的系统综述,人工智能驱动的肿瘤分期和治疗反应预测有助于为直肠癌患者量身定制治疗策略:本文总结了当前人工智能在直肠癌成像领域的应用情况,强调了基于数据集质量、模型性能和外部验证的性能报告设计:使用各种卷积神经网络模型,人工智能驱动的肿瘤分割已经取得了可喜的成果。基于人工智能的分期和治疗反应预测已显示出作为个性化治疗策略辅助工具的潜力。一些研究表明,在预测微卫星不稳定性和 KRAS 状态方面,人工智能的性能优于传统模型,为确定基因突变提供了无创、经济的替代方法:基于图像的直肠癌人工智能研究显示了可接受的诊断性能,但也面临着一些挑战,包括标准化数据集规模有限、需要多中心研究、缺乏肿瘤相关性以及临床植入的外部验证。要在直肠癌的临床治疗中可行地整合人工智能模型,克服这些陷阱和障碍至关重要,值得进一步研究。
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Performance reporting design in artificial intelligence studies using image-based TNM staging and prognostic parameters in rectal cancer: a systematic review.

Purpose: The integration of artificial intelligence (AI) and magnetic resonance imaging in rectal cancer has the potential to enhance diagnostic accuracy by identifying subtle patterns and aiding tumor delineation and lymph node assessment. According to our systematic review focusing on convolutional neural networks, AI-driven tumor staging and the prediction of treatment response facilitate tailored treat-ment strategies for patients with rectal cancer.

Methods: This paper summarizes the current landscape of AI in the imaging field of rectal cancer, emphasizing the performance reporting design based on the quality of the dataset, model performance, and external validation.

Results: AI-driven tumor segmentation has demonstrated promising results using various convolutional neural network models. AI-based predictions of staging and treatment response have exhibited potential as auxiliary tools for personalized treatment strategies. Some studies have indicated superior performance than conventional models in predicting microsatellite instability and KRAS status, offer-ing noninvasive and cost-effective alternatives for identifying genetic mutations.

Conclusion: Image-based AI studies for rectal can-cer have shown acceptable diagnostic performance but face several challenges, including limited dataset sizes with standardized data, the need for multicenter studies, and the absence of oncologic relevance and external validation for clinical implantation. Overcoming these pitfalls and hurdles is essential for the feasible integration of AI models in clinical settings for rectal cancer, warranting further research.

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CiteScore
3.30
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3.20%
发文量
73
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