首页> 美国卫生研究院文献>Cancer Informatics >A Functional Spatial Analysis Platform for Discovery of Immunological Interactions Predictive of Low-Grade to High-Grade Transition of Pancreatic Intraductal Papillary Mucinous Neoplasms
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A Functional Spatial Analysis Platform for Discovery of Immunological Interactions Predictive of Low-Grade to High-Grade Transition of Pancreatic Intraductal Papillary Mucinous Neoplasms

机译:一个功能性的空间分析平台可发现可预测胰腺导管内乳头状黏液性肿瘤由低级向高级过渡的免疫相互作用。

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摘要

Intraductal papillary mucinous neoplasms (IPMNs), critical precursors of the devastating tumor pancreatic ductal adenocarcinoma (PDAC), are poorly understood in the pancreatic cancer community. Researchers have shown that IPMN patients with high-grade dysplasia have a greater risk of subsequent development of PDAC in the remnant pancreas than do patients with low-grade dysplasia. In this study, we built a computational prediction model that encapsulates the spatial cellular interactions in IPMNs that play key roles in the transformation of low-grade IPMN cysts to high-grade cysts en route to PDAC. Using multiplex immunofluorescent images of IPMN cysts, we adopted algorithms from spatial statistics and functional data analysis to create metrics that summarize the spatial interactions in IPMNs. We showed that an ensemble of models learned using these spatial metrics can robustly predict, with high accuracy, (1) the dysplasia grade (low vs high grade) and (2) the risk of a low-grade cyst progressing to a high-grade cyst. We obtained high classification accuracies on both tasks, with areas under the curve of 0.81 (95% confidence interval: 0.71-0.9) for task 1 and 0.81 (95% confidence interval: 0.7-0.94) for task 2. To the best of our knowledge, this is the first application of an ensemble machine learning approach for discovering critical cellular spatial interactions in IPMNs using imaging data. We envision that our work can be used as a risk assessment tool for patients diagnosed with IPMNs and facilitate greater understanding and investigation of the cellular interactions that cause transition of IPMNs to PDAC.
机译:胰腺癌社区对导管内乳头状粘液性肿瘤(IPMNs)是破坏性肿瘤胰腺导管腺癌(PDAC)的重要先兆。研究人员已经显示,具有高度不典型增生的IPMN患者与较小的不典型增生的患者相比,在胰腺残留PDAC继发发展的风险更大。在这项研究中,我们建立了一个计算预测模型,该模型封装了IPMN中的空间细胞相互作用,这些相互作用在将低级IPMN囊肿转化为PDAC的高级囊肿中起关键作用。使用IPMN囊肿的多重免疫荧光图像,我们采用了来自空间统计和功能数据分析的算法来创建指标,以总结IPMN的空间相互作用。我们显示,使用这些空间量度学习的模型的整体可以准确地可靠地预测(1)发育异常级别(低与高),以及(2)低度囊肿发展为高级别的风险囊肿。我们在两项任务上均获得了较高的分类精度,任务1和任务2的曲线面积分别为0.81(95%置信区间:0.71-0.9)和0.81(95%置信区间:0.7-0.94)。众所周知,这是集成机器学习方法的第一个应用,该方法用于使用成像数据发现IPMN中的关键细胞空间相互作用。我们设想,我们的工作可以用作诊断为IPMN的患者的风险评估工具,并有助于更好地理解和研究引起IPMN过渡到PDAC的细胞相互作用。

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