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Detecting Synapse Location and Connectivity by Signed Proximity Estimation and Pruning with Deep Nets

机译:通过签名的邻近估计和深网络修剪来检测突触位置和连接

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Synaptic connectivity detection is a critical task for neural reconstruction from Electron Microscopy (EM) data. Most of the existing algorithms for synapse detection do not identify the cleft location and direction of connectivity simultaneously. The few methods that computes direction along with contact location have only been demonstrated to work on either dyadic (most common in vertebrate brain) or polyadic (found in fruit fly brain) synapses, but not on both types. In this paper, we present an algorithm to automatically predict the location as well as the direction of both dyadic and polyadic synapses. The proposed algorithm first generates candidate synaptic connections from voxelwise predictions of signed proximity generated by a 3D U-net. A second 3D CNN then prunes the set of candidates to produce the final detection of cleft and connectivity orientation. Experimental results demonstrate that the proposed method outperforms the existing methods for determining synapses in both rodent and fruit fly brain. (Code at: https://github. com/paragt/EMSynConn).
机译:突触连接的检测是用于从电子显微镜(EM)的数据重建神经一个关键任务。大多数的突触检测现有算法不同时识别连接的裂口位置和方向。与接触位置一起计算方向的一些方法只被证实(在脊椎动物大脑最常见)或任二元工作polyadic突触(在果蝇大脑中发现),但不是在这两种类型。在本文中,我们提出了一种算法来自动预测的位置以及两个二进和polyadic突触的方向。该算法首先生成从由3D U形净生成签署接近voxelwise预测候选突触连接。第二3D CNN然后修剪的候选集合以产生裂和连接取向的最终检测。实验结果表明,该方法优于确定在啮齿类和果蝇大脑突触的现有方法。 (代码于:https:// github上COM / paragt / EMSynConn)。

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