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  BigNeuron: A resource to benchmark and predict best-performing algorithms for automated reconstruction of neuronal morphology

Manubens-Gil, L., Zhou, Z., Chen, H., Ramanathan, A., Liu, X., Liu, Y., Bria, A., Gillette, T., Ruan, Z., Yang, J., Radojević, M., Zhao, T., Cheng, L., Qu, L., Liu, S., Bouchard, K. E., Gu, L., Cai, W., Ji, S., Roysam, B., Wang, C.-W., Yu, H., Sironi, A., Iascone, D. M., Zhou, J., Bas, E., Conde-Sousa, E., Aguiar, P., Li, X., Li, Y., Nanda, S., Wang, Y., Muresan, L., Fua, P., Ye, B., He, H.-y., Staiger, J. F., Peter, M., Cox, D. N., Simonneau, M., Oberlaender, M., Jefferis, G., Ito, K., Gonzalez-Bellido, P., Kim, J., Rubel, E., Cline, H. T., Zeng, H., Nern, A., Chiang, A.-S., Yao, J., Roskams, J., Livesey, R., Stevens, J., Liu, T., Dang, C., Guo, Y., Zhong, N., Tourassi, G., Hill, S., Hawrylycz, M., Koch, C., Meijering, E., Ascoli, G. A., & Peng, H. (2022). BigNeuron: A resource to benchmark and predict best-performing algorithms for automated reconstruction of neuronal morphology. bioRxiv: the preprint server for biology. doi:10.1101/2022.05.10.491406.

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アイテムのパーマリンク: https://hdl.handle.net/21.11116/0000-000D-0531-6 版のパーマリンク: https://hdl.handle.net/21.11116/0000-000D-0532-5
資料種別: Preprint

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説明:
published as final article in nature methods
OA-Status:
Not specified

作成者

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 作成者:
Manubens-Gil, Linus1, 著者
Zhou, Zhi1, 著者
Chen, Hanbo1, 著者
Ramanathan, Arvind1, 著者
Liu, Xiaoxiao1, 著者
Liu, Yufeng1, 著者
Bria, Alessandro1, 著者
Gillette, Todd1, 著者
Ruan, Zongcai1, 著者
Yang, Jian1, 著者
Radojević, Miroslav1, 著者
Zhao, Ting1, 著者
Cheng, Li1, 著者
Qu, Lei1, 著者
Liu, Siqi1, 著者
Bouchard, Kristofer E.1, 著者
Gu, Lin1, 著者
Cai, Weidong1, 著者
Ji, Shuiwang1, 著者
Roysam, Badrinath1, 著者
Wang, Ching-Wei1, 著者Yu, Hongchuan1, 著者Sironi, Amos1, 著者Iascone, Daniel Maxim1, 著者Zhou, Jie1, 著者Bas, Erhan1, 著者Conde-Sousa, Eduardo1, 著者Aguiar, Paulo1, 著者Li, Xiang1, 著者Li, Yujie1, 著者Nanda, Sumit1, 著者Wang, Yuan1, 著者Muresan, Leila1, 著者Fua, Pascal1, 著者Ye, Bing1, 著者He, Hai-yan1, 著者Staiger, Jochen F.1, 著者Peter, Manuel1, 著者Cox, Daniel N.1, 著者Simonneau, Michel1, 著者Oberlaender, Marcel2, 著者                 Jefferis, Gregory1, 著者Ito, Kei1, 著者Gonzalez-Bellido, Paloma1, 著者Kim, Jinhyun1, 著者Rubel, Edwin1, 著者Cline, Hollis T.1, 著者Zeng, Hongkui1, 著者Nern, Aljoscha1, 著者Chiang, Ann-Shyn1, 著者Yao, Jianhua1, 著者Roskams, Jane1, 著者Livesey, Rick1, 著者Stevens, Janine1, 著者Liu, Tianming1, 著者Dang, Chinh1, 著者Guo, Yike1, 著者Zhong, Ning1, 著者Tourassi, Georgia1, 著者Hill, Sean1, 著者Hawrylycz, Michael1, 著者Koch, Christof1, 著者Meijering, Erik1, 著者Ascoli, Giorgio A.1, 著者Peng, Hanchuan1, 著者 全て表示
所属:
1External Organizations, ou_persistent22              
2Max Planck Research Group In Silico Brain Sciences, Max Planck Institute for Neurobiology of Behavior – caesar, Max Planck Society, ou_3361774              

内容説明

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 要旨: BigNeuron is an open community bench-testing platform combining the expertise of neuroscientists and computer scientists toward the goal of setting open standards for accurate and fast automatic neuron reconstruction. The project gathered a diverse set of image volumes across several species representative of the data obtained in most neuroscience laboratories interested in neuron reconstruction. Here we report generated gold standard manual annotations for a selected subset of the available imaging datasets and quantified reconstruction quality for 35 automatic reconstruction algorithms. Together with image quality features, the data were pooled in an interactive web application that allows users and developers to perform principal component analysis, t-distributed stochastic neighbor embedding, correlation and clustering, visualization of imaging and reconstruction data, and benchmarking of automatic reconstruction algorithms in user-defined data subsets. Our results show that image quality metrics explain most of the variance in the data, followed by neuromorphological features related to neuron size. By benchmarking automatic reconstruction algorithms, we observed that diverse algorithms can provide complementary information toward obtaining accurate results and developed a novel algorithm to iteratively combine methods and generate consensus reconstructions. The consensus trees obtained provide estimates of the neuron structure ground truth that typically outperform single algorithms. Finally, to aid users in predicting the most accurate automatic reconstruction results without manual annotations for comparison, we used support vector machine regression to predict reconstruction quality given an image volume and a set of automatic reconstructions.

資料詳細

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言語: eng - English
 日付: 2022-05-11
 出版の状態: オンラインで出版済み
 ページ: -
 出版情報: -
 目次: -
 査読: 査読なし
 識別子(DOI, ISBNなど): DOI: 10.1101/2022.05.10.491406
 学位: -

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出版物 1

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出版物名: bioRxiv : the preprint server for biology
  省略形 : bioRxiv
種別: 学術雑誌
 著者・編者:
所属:
出版社, 出版地: -
ページ: - 巻号: - 通巻号: - 開始・終了ページ: - 識別子(ISBN, ISSN, DOIなど): ZDB: 2766415-6
CoNE: https://pure.mpg.de/cone/journals/resource/2766415-6