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GestAltNet: aggregation and attention to improve deep learning of gestational age from placental whole-slide images

机译:gestaltnet:从胎盘全幻灯片图像改善妊娠期妊娠期深度学习的聚集和注意力

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The placenta is the first organ to form and performs the functions of the lung, gut, kidney, and endocrine systems. Abnormalities in the placenta cause or reflect most abnormalities in gestation and can have life-long consequences for the mother and infant. Placental villi undergo a complex but reproducible sequence of maturation across the third-trimester. Abnormalities of villous maturation are a feature of gestational diabetes and preeclampsia, among others, but there is significant interobserver variability in their diagnosis. Machine learning has emerged as a powerful tool for research in pathology. To capture the volume of data and manage heterogeneity within the placenta, we developed GestaltNet, which emulates human attention to high-yield areas and aggregation across regions. We used this network to estimate the gestational age (GA) of scanned placental slides and compared it to a baseline model lacking the attention and aggregation functions. In the test set, GestaltNet showed a higher r2 (0.9444 vs. 0.9220) than the baseline model. The mean absolute error (MAE) between the estimated and actual GA was also better in the GestaltNet (1.0847 weeks vs. 1.4505 weeks). On whole-slide images, we found the attention sub-network discriminates areas of terminal villi from other placental structures. Using this behavior, we estimated GA for 36 whole slides not previously seen by the model. In this task, similar to that faced by human pathologists, the model showed an r2 of 0.8859 with an MAE of 1.3671 weeks. We show that villous maturation is machine-recognizable. Machine-estimated GA could be useful when GA is unknown or to study abnormalities of villous maturation, including those in gestational diabetes or preeclampsia. GestaltNet points toward a future of genuinely whole-slide digital pathology by incorporating human-like behaviors of attention and aggregation. The authors used artificial intelligence to estimate gestational age from scanned whole-slide images of placenta. They developed attention and aggregation deep learning methods because of the large volume of data and tissue heterogeneity. This study provides proof-of-concept in unannotated, unknown images with high accuracy.
机译:胎盘是第一个形成肺,肠,肾和内分泌系统的器官。胎盘的异常导致或反映妊娠最大的异常,对母亲和婴儿产生终身后果。胎盘绒毛在第三个三个月的复杂而可重复的成熟顺序进行。绒毛成熟的异常是妊娠期糖尿病和预先普拉帕西亚的特征,其中包括诊断中存在显着的Interobserver变异性。机器学习已成为病理学研究的强大工具。为了捕获胎盘内的数据量和管理异质性,我们开发了Gestaltnet,其旨在对人类注意高产量区域和地区的聚集。我们使用该网络来估计扫描胎盘幻灯片的胎龄(GA),并将其与缺乏关注和聚集功能的基线模型进行比较。在测试集中,GestAltNet显示出比基线模型更高的R2(0.9444 vs.0.9220)。估计和实际GA之间的平均绝对误差(MAE)在Gestaltnet中也更好(1.0847周与1.4505周)。在全幻灯片上,我们发现注意子网与其他胎盘结构的终端绒毛区歧视区域。使用此行为,我们估计了36个未以前由模型看到的整个幻灯片。在这项任务中,类似于人类病理学家面临的,该模型显示了0.8859的R2,MAE为1.3671周。我们表明绒毛成熟是机器可识别的。当Ga未知或研究绒毛成熟的异常,包括妊娠期糖尿病或预坦克斯的异常,机器估计的GA可能是有用的。 Gestaltnet通过纳入人类的关注和聚集的行为来指向真正的全幻灯片数字病理的未来。作者使用人工智能来估算胎盘的扫描整个幻灯片的妊娠年龄。由于大量的数据和组织异质性,它们提出了关注和聚合深度学习方法。本研究提供了高精度的未知图像中的概念证明。

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