首页> 美国卫生研究院文献>Neuro-Oncology >THER-19. MACHINE LEARNING APPROACH TO TUMOR DIAGNOSIS USING SMALL DATASETS: PROOF OF PRINCIPLE USING PEDIATRIC ADAMANTINOMATOUS CRANIOPHARYNGIOMA
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THER-19. MACHINE LEARNING APPROACH TO TUMOR DIAGNOSIS USING SMALL DATASETS: PROOF OF PRINCIPLE USING PEDIATRIC ADAMANTINOMATOUS CRANIOPHARYNGIOMA

机译:THER-19。使用小数据集进行肿瘤诊断的机器学习方法:使用小儿ADAMANTINOMATITY颅咽咽喉癌的原理证明

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摘要

Advances in Artificial Intelligence (AI) have rapidly become well known through the mainstream media, with myriad applications. Most commonly, AI has been leveraged for problems that possess vast amounts of sample data, as this enables AI models to better generalize patterns within the data. We hypothesized that novel computational methods could allow AI technologies to be applied to topics with more limited amounts of data, such as pediatric brain tumors. Craniopharyngioma, which has a frequency of approximately 2 in 1,000,000 children per year, requires very different treatment algorithms than other mass lesions that commonly present in the same anatomical region. As such, confidence regarding the diagnosis of ACP would offer a distinct advantage to healthcare providers, patients, and caregivers. This makes ACP an idea model to test the application of novel AI methods. Through our collected multi-institutional dataset of CT and MRI comprising approximately 100 ACP patients controlled against 100 patients diagnosed with other suprasellar lesions, we demonstrate that state-of-the-art networks can correctly identify ACP with accuracy levels exceeding 88%, which we demonstrate to be comparable or better than current diagnostic techniques. Using concepts such as data scaling, synthetic data expansion, image augmentation, transfer-learning, and fine-tuning, this preliminary work demonstrates the reliable application of AI models towards topics with restricted volumes of data.
机译:人工智能(AI)的进步已通过众多应用程序迅速地通过主流媒体广为人知。最常见的是,利用AI处理拥有大量样本数据的问题,因为这使AI模型可以更好地概括数据中的模式。我们假设新颖的计算方法可以允许将AI技术应用于数据量有限的主题,例如小儿脑瘤。颅咽管瘤每年约有1,000,000名儿童中有2例出现,与通常在同一解剖区域内出现的其他块状病变相比,其治疗方法需要完全不同。这样,对ACP诊断的信心将为医疗保健提供者,患者和护理人员提供明显的优势。这使ACP成为测试新颖AI方法应用的思想模型。通过我们收集的多机构CT和MRI数据集,其中包括约100名ACP患者和100名被诊断为其他鞍状上皮病变的患者,我们证明了最新的网络可以正确地识别ACP,其准确度超过88%,证明与当前的诊断技术相当或更好。这项初步工作使用诸如数据缩放,合成数据扩展,图像增强,传输学习和微调等概念,展示了AI模型对于数据量有限的主题的可靠应用。

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