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MICCAI-iseg2017挑战赛小结与婴儿脑组织分割总结

發(fā)布時間:2024/1/8 ChatGpt 38 豆豆
生活随笔 收集整理的這篇文章主要介紹了 MICCAI-iseg2017挑战赛小结与婴儿脑组织分割总结 小編覺得挺不錯的,現(xiàn)在分享給大家,幫大家做個參考.

按照數(shù)據(jù)集進(jìn)行劃分:

關(guān)于自動分割工具,嬰兒腦MR圖像來自單個時間點,其中縱向數(shù)據(jù)集不可用,因此必須開發(fā)不針對縱向數(shù)據(jù)集的分割工具,目前提出了一些機器學(xué)習(xí)方法,但這些方法的效果并不令人滿意。

iseg-2017:

競賽結(jié)果一共評估了兩次,第一次評估中的TOP-1為MSL_SKKU,第二次評估中降為了第二名,但由于第二次評估的時間較晚,因此已發(fā)表的論文大多與第一次評估中的冠軍作對比,在以下的總結(jié)中,把第一次評估的第一名作為挑戰(zhàn)賽的冠軍。

第二次評估結(jié)果入下:

第二次評估結(jié)果

MICCAI iseg-2017挑戰(zhàn)賽結(jié)果:? 第一名為MSL_SKKU

DICE、MHD、ASD

?

DICE結(jié)果排名如下:

三項分割標(biāo)簽各自的DICE排名

?

MHD排名結(jié)果如下:?

3項分割標(biāo)簽各自的MHD排名

?

ASD排名結(jié)果如下:

3項分割標(biāo)簽各自的ASD排名

?

?

前五名的結(jié)果為:

top-5

?

與數(shù)據(jù)集相關(guān)的論文:

Bui T D, Shin J, Moon T. 3d densely convolution networks for volumetric segmentation[J]. arXiv preprint arXiv:1709.03199, 2017.?

?---10引用? ?采用DenseNet? ? 挑戰(zhàn)賽中排名第一? ?隊伍名:MSL-SKKU

取小數(shù)點后3位的情況下9項指標(biāo)6項第一


Dolz J, Desrosiers C, Wang L, et al. Deep CNN ensembles and suggestive annotations for infant brain MRI segmentation[J]. arXiv preprint arXiv:1712.05319, 2017.? ? ? ?

? ---6引用? ?采用SemiDenseNet? ?在某些指標(biāo)中排名第一或者第二,結(jié)果如下:

?


Dolz J, Ayed I B, Yuan J, et al. Isointense infant brain segmentation with a hyper-dense connected convolutional neural network[C]//Biomedical Imaging (ISBI 2018), 2018 IEEE 15th International Symposium on. IEEE, 2018: 616-620.?

??---3引用? ?采用DenseNet? ?9個指標(biāo)中6個排名前三

該文章基于另外兩篇文章:

?Konstantinos Kamnitsas et al., "Efficient multi-scale 3D CNN with fully connected CRF for accurate brain lesion segmentation",?Medical image analysis, vol. 36, pp. 61-78, 2017.?

Jose Dolz et al., "3D fully convolutional networks for subcortical segmentation in MRI: A large-scale study",?NeuroImage, 2017.

?


Dolz J, Gopinath K, Yuan J, et al. HyperDense-Net: A hyper-densely connected CNN for multi-modal image segmentation[J]. arXiv preprint arXiv:1804.02967, 2018.

?

iseg-2017

?

取小數(shù)點后兩位的情況下,都為9項指標(biāo)7項第一

對于MRBrainS2013:

MRBrainS2013

提交時間為18.02.16,提交時為第一名,目前排名第6,對比結(jié)果如下:

HyperDenseNet(top-6)0.86331.346.190.89461.786.030.83422.267.31
XMU_SmartDSP2(top-1)0.8651.295.750.8991.735.4784.81.846.83

Dolz J, Ayed I B, Yuan J, et al. HyperDense-Net: A hyper-densely connected CNN for multi-modal image semantic segmentation[J]. arXiv preprint arXiv:1710.05956, 2017.

? ---未了解(上一篇的效果較好)


Fonov V, Doyle A, Evans A C, et al. NeuroMTL iSEG challenge methods[J]. bioRxiv, 2018: 278465.

? ---排名較靠前? ?隊伍名:NeuroMTL


Sanroma G, Benkarim O M, Piella G, et al. Learning to combine complementary segmentation methods for fetal and 6-month infant brain MRI segmentation[J]. Computerized Medical Imaging and Graphics, 2018, 69: 52-59.???

? ---非頂會,效果不好但拿不到數(shù)據(jù)集


Zeng G, Zheng G. Multi-stream 3D FCN with multi-scale deep supervision for multi-modality isointense infant brain MR image segmentation[C]//Biomedical Imaging (ISBI 2018), 2018 IEEE 15th International Symposium on. IEEE, 2018: 136-140.??

? ---排名第三 隊伍名:Bern_IPMI? 采用FCN?


Wang Z, Zou N, Shen D, et al. Global Deep Learning Methods for Multimodality Isointense Infant Brain Image Segmentation[J]. arXiv preprint arXiv:1812.04103, 2018.

-----預(yù)印本,目前最新效果最好的的論文(WM與GM為最佳性能,CSF具有可比性),提交時間為2018.12.10,未參與挑戰(zhàn)賽排名,實驗結(jié)果為:

?WMGMCSF
top-10.9010.9190.958
論文0.90440.92190.9557

Li T, Zhou F, Zhu Z, et al. A label-fusion-aided convolutional neural network for isointense infant brain tissue segmentation[C]//Biomedical Imaging (ISBI 2018), 2018 IEEE 15th International Symposium on. IEEE, 2018: 692-695.?

使用的數(shù)據(jù)集為 iseg-2017,使用的網(wǎng)絡(luò)為FCNN,實驗結(jié)果接近第一名,實驗結(jié)果如下:

CSF指標(biāo)相同

Kumar S, Conjeti S, Roy A G, et al. InfiNet: Fully convolutional networks for infant brain MRI segmentation[C]//Biomedical Imaging (ISBI 2018), 2018 IEEE 15th International Symposium on. IEEE, 2018: 145-148.?

數(shù)據(jù)集來源于BCP項目,該數(shù)據(jù)集作為iseg-2017挑戰(zhàn)賽數(shù)據(jù)集的一部分(總數(shù),訓(xùn)練測試集數(shù)一樣),結(jié)果比挑戰(zhàn)賽TOP-1低2%,但參數(shù)減半。

3D-DenseNet為挑戰(zhàn)賽第一名的結(jié)果

推薦的文章為:但3篇文章都為預(yù)印本

1.Bui T D, Shin J, Moon T. 3d densely convolution networks for volumetric segmentation[J]. arXiv preprint arXiv:1709.03199, 2017.?

?---10引用? ?采用DenseNet? ? 挑戰(zhàn)賽中排名第一? ?隊伍名:MSL-SKKU

取小數(shù)點后3位的情況下9項指標(biāo)6項第一

2.Dolz J, Gopinath K, Yuan J, et al. HyperDense-Net: A hyper-densely connected CNN for multi-modal image segmentation[J]. arXiv preprint arXiv:1804.02967, 2018.

--取小數(shù)點后2為的情況下都為9項指標(biāo)7項第一

3.Wang Z, Zou N, Shen D, et al. Global Deep Learning Methods for Multimodality Isointense Infant Brain Image Segmentation[J]. arXiv preprint arXiv:1812.04103, 2018.

-----預(yù)印本,目前最新效果最好的的論文(WM與GM為最佳性能,CSF具有可比性),提交時間為2018.12.10,未參與挑戰(zhàn)賽排名


?

NDAR數(shù)據(jù)集

Wang L, Li G, Shi F, et al. Volume-based analysis of 6-month-old infant brain MRI for autism biomarker identification and early diagnosis[C]//International Conference on Medical Image Computing and Computer-Assisted Intervention. Springer, Cham, 2018: 411-419.

采用U-Net,數(shù)據(jù)集來源于NDAR,包含18名受試者,分割結(jié)果很好------未找到數(shù)據(jù)集

分割結(jié)果

?


neobrains(類別較多)--相關(guān)文章較少

第一名排名結(jié)果如下(在大多數(shù)指標(biāo)中排名第一)提交時間為2018.09

在40周矯正年齡時獲得軸向掃描

?CoGMUMWCSFVentCBBSBGTMWMUWM+MWMCSF+Vent
DC0.890.940.850.900.950.860.940.53(2)0.93(3)0.85
MSD0.10.090.160.140.260.240.300.600.100.16
HD18.7910.578.6613.7616.407.1319.849.197.838.27

在30周矯正年齡時獲得冠狀位掃描

?CoGMUWMCSFVentCBBSBGTMWMUMW+MWMSCF+Vent
DC0.790.950.890.870.910.840.89-0.950.91
MSD0.140.140.130.330.300.370.42-0.140.10
HD13.819.166.4313.697.097.547.98-9.994,96

在40周矯正年齡時獲得冠狀位掃描

?CoGMUWMCSFVentCBBSBGTMWMUWM+MWMCSF+Vent
DC0.790.910.820.820.890.680.860.040.910.83
MSD0.210.180.300.410.651.130.987.070.220.28
HD27.2024.0012.8615.4226.1815.1525.9127.9213.7512.52

使用了該數(shù)據(jù)集的部分文章:

  • Sanroma et al., In: Machine Learning in Medical Imaging (MICCAI), 2016, 27–35
  • Moeskops et al., IEEE Transactions on Medical Imaging, 2016, 35(5):1252–1261
  • Beare et al., Frontiers in Neuroinformatics, 2016, 10:12
  • Moeskops et al., PLOS ONE, 2015, 10(7):e0131552
  • Moeskops et al., NeuroImage, 2015, 118:628–641
  • Cherel et al., In: SPIE Medical Imaging, 2015, 9413:941311
  • Wang et al., NeuroImage, 2015, 108:160–172
  • Wang et al., In: Medical Computer Vision (MICCAI), 2014, 8848:22–33
  • Chita et al., In: SPIE Medical Imaging, 2013, 8669:86693
  • Moeskops et al., In: SPIE Medical Imaging, 2013, 8670:867011

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其他

1.Nie D, Wang L, Adeli E, et al. 3-D fully convolutional networks for multimodal isointense infant brain image segmentation[J]. IEEE Transactions on Cybernetics, 2018.? ? 1區(qū)

2.Bernal J, Kushibar K, Cabezas M, et al. Quantitative analysis of patch-based fully convolutional neural networks for tissue segmentation on brain magnetic resonance imaging[J]. arXiv preprint arXiv:1801.06457, 2018.

?3.Chen J, Zhang H, Nie D, et al. Automatic accurate infant cerebellar tissue segmentation with densely connected convolutional network[C]//International Workshop on Machine Learning in Medical Imaging. Springer, Cham, 2018: 233-240.

MICCAI挑戰(zhàn)賽底部文章:

[1]. Li Wang, Yaozong Gao, Feng Shi, Gang Li, John H. Gilmore, Weili Lin, Dinggang Shen.?LINKS: Learning-based multi-source IntegratioN frameworK for Segmentation of infant brain images, Neuroimage, 108, 160-172, 2015.
[2]. Li Wang, Feng Shi, Yaozong Gao, Gang Li, John H. Gilmore, Weili Lin, Dinggang Shen.?Integration of Sparse Multi-modality Representation and Anatomical Constraint for Isointense Infant Brain MR Image Segmentation, Neuroimage, 89, 152-164, 2014.
[3]. Wenlu Zhang, Rongjian Li, Houtao Deng, Li Wang, Weili Lin, Shuiwang Ji, Dinggang Shen.?Deep Convolutional Neural Networks for Multi-Modality Isointense Infant Brain Image Segmentation, Neuroimage, 108, 214–224, 2015.

綜述文章:

Li G, Wang L, Yap P T, et al. Computational neuroanatomy of baby brains: A review[J]. Neuroimage, 2018.????

? ---引用9 ???綜述文章

A review on automatic fetal and neonatal brain MRI segmentation

? ---綜述文章

Convolutional Neural Networks for Rapid and Simultaneous Brain Extraction and Tissue Segmentation? ?書籍

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