A deep learning-based image analysis for assessing the extent of abduction in abducens nerve palsy patients before and after strabismus surgery
Full Length Article|更新时间:2024-12-14
|
A deep learning-based image analysis for assessing the extent of abduction in abducens nerve palsy patients before and after strabismus surgery
A deep learning-based image analysis for assessing the extent of abduction in abducens nerve palsy patients before and after strabismus surgery
眼科实践与研究新进展2024年4卷第4期 页码:202-208
作者机构:
1. Eye Center, The Second Affiliated Hospital of Zhejiang University School of Medicine, Zhejiang Provincial Key Laboratory of Ophthalmology, Zhejiang Provincial Clinical Research Center for Eye Diseases, Zhejiang Provincial Engineering Institute on Eye Diseases,Hangzhou,China
2. Hangzhou Dianzi University,Hangzhou,China
3. Wellcome-MRC Cambridge Stem Cell Institute, University of Cambridge, Cambridge, United Kingdom
4. School of Electronic Engineering and Computer Science, Queen Mary University of London, London, United Kingdom
Ziying Zhou, Shengqiang Shi, Xiajing Tang, 等. A deep learning-based image analysis for assessing the extent of abduction in abducens nerve palsy patients before and after strabismus surgery[J]. 眼科实践与研究新进展, 2024,4(4):202-208.
ZIYING ZHOU, SHENGQIANG SHI, XIAJING TANG, et al. A deep learning-based image analysis for assessing the extent of abduction in abducens nerve palsy patients before and after strabismus surgery. [J]. Aopr, 2024, 4(4): 202-208.
Ziying Zhou, Shengqiang Shi, Xiajing Tang, 等. A deep learning-based image analysis for assessing the extent of abduction in abducens nerve palsy patients before and after strabismus surgery[J]. 眼科实践与研究新进展, 2024,4(4):202-208. DOI: 10.1016/j.aopr.2024.06.004.
ZIYING ZHOU, SHENGQIANG SHI, XIAJING TANG, et al. A deep learning-based image analysis for assessing the extent of abduction in abducens nerve palsy patients before and after strabismus surgery. [J]. Aopr, 2024, 4(4): 202-208. DOI: 10.1016/j.aopr.2024.06.004.
A deep learning-based image analysis for assessing the extent of abduction in abducens nerve palsy patients before and after strabismus surgery
摘要
Abstract
PurposeThis study aimed to propose a novel deep learning-based approach to assess the extent of abduction in patients with abducens nerve palsy before and after strabismus surgery.MethodsThis study included 13 patients who were diagnosed with abducens nerve palsy and underwent strabismus surgery in a tertiary hospital. Photographs of primary
dextroversion and levoversion position were collected before and after strabismus surgery. The eye location and eye segmentation network were trained via recurrent residual convolutional neural networks with attention gate connection based on U-Net (R2AU-Net). Facial images of abducens nerve palsy patients were used as the test set and parameters were measured automatically based on the masked images. Absolute abduction also was measured manually
and relative abduction was calculated. Agreements between manual and automatic measurements
as well as repeated automatic measurements were analyzed. Preoperative and postoperative results were compared.ResultsThe intraclass correlation coefficients (ICCs) between manual and automatic measurements of absolute abduction
ranged from 0.985 to 0.992 (
P
<0.001)
and the bias ranged from −0.25 mm to −0.05 mm. The ICCs between two repeated automatic measurements ranged from 0.994 to 0.997 (
P
<0.001)
and the bias ranged from −0.11 mm to 0.05 mm. After strabismus surgery
absolute abduction of affected eye increased from 2.18 ± 1.40 mm to 3.36 ± 1.93 mm (
P
<0.05). The relative abduction was improved in 76.9% patients (10/13) after surgery (
P
<0.01).ConclusionsThis image analysis technique demonstrated excellent accuracy and repeatability for automatic measurements of ocular abduction
which has promising application prospects in objectively assessing surgical outcomes in patients with abducens nerve palsy.
1 C. Thomas, S. DawoodCranial nerve VI palsy (Abducens nerve), Disease-a-Month 67 https://doi.org/10.1016/j.disamonth.2021.101133 (2021)
2 C. Elder, C. Hainline, S.L. Galetta, L.J. Balcer, J.C. RuckerIsolated abducens nerve palsy: update on evaluation and diagnosis Curr Neurol Neurosci Rep, 16 (2016), p. 69, 10.1007/s11910-016-0671-4
3 U.-C. Park, S.-J. Kim, J.-M. Hwang, Y.S. YuClinical features and natural history of acquired third, fourth, and sixth cranial nerve palsy Eye, 22 (2008), pp. 691-696, 10.1038/sj.eye.6702720
4 R. Hörner, J. Kassubek, J. Dreyhaupt, A.C. LudolphThe spectrum and differential diagnosis of acquired ocular motor nerve palsies: a clinical study of 502 patients J Neurol, 269 (2022), pp. 2140-2148, 10.1007/s00415-021-10761-w
5 S.V. Patel, S. Mutyala, D.A. Leske, D.O. Hodge, J.M. HolmesIncidence, associations, and evaluation of sixth nerve palsy using a population-based method Ophthalm., 111 (2004), pp. 369-375, 10.1016/j.ophtha.2003.05.024
6 S. Prasad, N.J. VolpeParalytic strabismus: third, fourth, and sixth nerve palsy Neurol Clin, 28 (2010), pp. 803-833, 10.1016/j.ncl.2010.04.001
7 K.B. GuntonVertical rectus transpositions in sixth nerve palsies Curr Opin Ophthalmol, 26 (2015), pp. 366-370, 10.1097/ICU.0000000000000178
8 F.J. Rowe, C.P. NoonanBotulinum toxin for the treatment of strabismus Cochrane Database Syst Rev, 3 (2017), p. CD006499, 10.1002/14651858.CD006499.pub4
9 A.B. Scott, S.P. KraftBotulinum toxin injection in the management of lateral rectus paresis Ophthalm., 92 (1985), pp. 676-683, 10.1016/S0161-6420(85)33982-9
10 J.M. Holmes, G.G. Hohberger, D.A. LeskePhotographic and clinical techniques for outcome assessment in sixth nerve palsy Ophthalm., 108 (2001), pp. 1300-1307, 10.1016/S0161-6420(01)00592-9
11 X. Bao, Y. Sun, X. Zhan, G. LiOrbital and eyelid diseases: the next breakthrough in artificial intelligence? Front Cell Dev Biol, 10 (2022), Article 1069248, 10.3389/fcell.2022.1069248
12 N. Anton, B. Doroftei, S. Curteanu, et al.Comprehensive review on the use of artificial intelligence in ophthalmology and future research directions Diagnostics, 13 (2022), p. 100, 10.3390/diagnostics13010100
13 L. Lou, X. Huang, Y. Sun, et al.Automated photographic analysis of inferior oblique overaction based on deep learning Quant Imag Med Surg, 13 (2023), pp. 329-338, 10.21037/qims-22-467
14 L. Lou, Y. Sun, X. Huang, et al.Automated measurement of ocular movements using deep learning-based image analysis Curr Eye Res, 47 (2022), pp. 1346-1353, 10.1080/02713683.2022.2053165
15 L. Wei, W. He, J. Meng, D. Qian, Y. Lu, X. ZhuEvaluation of the white-to-white distance in 39,986 Chinese cataractous eyes Invest Ophthalmol Vis Sci, 62 (2021), p. 7, 10.1167/iovs.62.1.7
16 Q. Zuo, S. Chen, Z. WangR2AU-Net: attention recurrent residual convolutional neural network for multimodal medical image segmentation Secur Commun Network, 2021 (2021), pp. 1-10, 10.1155/2021/6625688
17 Z. Liu, P. Luo, X. Wang, X. TangDeep learning face attributes in the wild 2015 IEEE International Conference on Computer Vision (ICCV), IEEE, Santiago, Chile (2015), pp. 3730-3738, 10.1109/ICCV.2015.425
18 J.R. Landis, G.G. KochThe measurement of observer agreement for categorical data Biometrics, 33 (1977), pp. 159-174, 10.2307/2529310
19 M.D. Mills, D.K. Coats, S.P. Donahue, D.T. WheelerStrabismus surgery for adults: a report by the American Academy of Ophthalmology Ophthalm., 111 (2004), pp. 1255-1262, 10.1016/j.ophtha.2004.03.013
20 K. Fujiike, Y. Mizuno, Y. Hiratsuka, M. YamadaThe Strabismus Surgery Study Group, Quality of life and cost-utility assessment after strabismus surgery in adults Jpn J Ophthalmol, 55 (2011), pp. 268-276, 10.1007/s10384-011-0022-6
21 A. KestenbaumClinical Methods of Neuro-Ophthalmological Examinations (second ed.), Grune & Stratton, New York and London (1961)
22 S. Hanif, F.J. Rowe, A.R. O’connorA comparative review of methods to record ocular rotations British. Irish. Ortho. J, 6 (2009), pp. 47-51, 10.22599/bioj.8
23 Z.H. Chen, H. Fu, W.L. Lo, Z. Chi, B. XuEye-tracking-aided digital system for strabismus diagnosis Healthcare. Techno. Lett., 5 (2018), pp. 1-6, 10.1049/htl.2016.0081
24 H.W. Lim, D.E. Lee, J.W. Lee, et al.Clinical measurement of the angle of ocular movements in the nine cardinal positions of gaze Ophthalm., 121 (2014), pp. 870-876, 10.1016/j.ophtha.2013.11.019
25 Y.C. Kang, H.K. Yang, Y.J. Kim, J.-M. Hwang, K.G. KimAutomated mathematical algorithm for quantitative measurement of strabismus based on photographs of nine cardinal gaze positions BioMed Res Int, 2022 (2022), Article 9840494, 10.1155/2022/9840494
26 J.C. O'Brien, A.T. Melson, J.C. Bryant, K. Ding, B.K. Farris, R.M. SiatkowskiSurgical outcomes following strabismus surgery for abducens nerve palsy J Am Assoc Pediatr Ophthalmol Strabismus, 27 (2023), pp. 142.e1-142.e6, 10.1016/j.jaapos.2023.04.003