Comparison of clinicians and an artificial neural network regarding accuracy and certainty in performance of visual field assessment for the diagnosis of glaucoma

被引:31
作者
Andersson, Sabina [1 ]
Heijl, Anders [1 ]
Bizios, Dimitrios [1 ]
Bengtsson, Boel [1 ]
机构
[1] Lund Univ, Dept Clin Sci, Skane Univ Hosp, Malmo, Sweden
基金
瑞典研究理事会;
关键词
artificial neural network; diagnosis; glaucoma; interpretation; subjective assessment; visual field; MACHINE LEARNING CLASSIFIERS; AUTOMATED PERIMETRY; IDENTIFY PATTERNS; STANDARD; RELIABILITY; ALGORITHMS; DEFECTS;
D O I
10.1111/j.1755-3768.2012.02435.x
中图分类号
R77 [眼科学];
学科分类号
100212 ;
摘要
. Purpose: To compare clinicians and a trained artificial neural network (ANN) regarding accuracy and certainty of assessment of visual fields for the diagnosis of glaucoma. Methods: Thirty physicians with different levels of knowledge and experience in glaucoma management assessed 30-2 SITA Standard visual field printouts that included full Statpac information from 99 patients with glaucomatous optic neuropathy and 66 healthy subjects. Glaucomatous eyes with perimetric mean deviation values worsethan -10dB were not eligible. The fields were graded on a scale of 1-10, where 1 indicated healthy with absolute certaintyand 10 signified glaucoma; 5.5 was the cut-off between healthy and glaucoma. The same fields were classified by a previously trained ANN. The ANN output was transformed into a linear scale that matched the scale used in the subjective assessments. Classification certainty was assessed using a classification error score. Results: Among the physicians, sensitivity ranged from 61% to 96% (mean 83%) and specificity from 59% to 100% (mean 90%). Our ANN achieved 93% sensitivity and 91% specificity, and it was significantly more sensitive than the physicians (p<0.001) at a similar level of specificity. The ANN classification error score was equivalent to the top third scores of all physicians, and the ANN never indicated a high degree of certainty for any of its misclassified visual field tests. Conclusion: Our results indicate that a trained ANN performs at least as well as physicians in assessments of visual fields for the diagnosis of glaucoma.
引用
收藏
页码:413 / 417
页数:5
相关论文
共 20 条
[1]  
Anderson D.R., 1999, Automated static perimetry, V2nd
[2]   GLAUCOMA HEMIFIELD TEST - AUTOMATED VISUAL-FIELD EVALUATION [J].
ASMAN, P ;
HEIJL, A .
ARCHIVES OF OPHTHALMOLOGY, 1992, 110 (06) :812-819
[3]  
Bengtsson B, 2000, INVEST OPHTH VIS SCI, V41, P2201
[4]   Effects of input data on the performance of a neural network in distinguishing normal and glaucomatous visual fields [J].
Bengtsson, B ;
Bizios, D ;
Heijl, A .
INVESTIGATIVE OPHTHALMOLOGY & VISUAL SCIENCE, 2005, 46 (10) :3730-3736
[5]   Inter-subject variability and normal limits of the SITA standard, SITA fast, and the Humphrey full threshold computerized perimetry strategies, SITA STATPAC [J].
Bengtsson, B ;
Heijl, A .
ACTA OPHTHALMOLOGICA SCANDINAVICA, 1999, 77 (02) :125-129
[6]   Trained artificial neural network for glaucoma diagnosis using visual field data - A comparison with conventional algorithms [J].
Bizios, Dimitrios ;
Heijl, Anders ;
Bengtsson, Boel .
JOURNAL OF GLAUCOMA, 2007, 16 (01) :20-28
[7]   Comparison of machine learning and traditional classifiers in glaucoma diagnosis [J].
Chan, KL ;
Lee, TW ;
Sample, P ;
Goldbaum, MH ;
Weinreb, RN ;
Sejnowski, ATJ .
IEEE TRANSACTIONS ON BIOMEDICAL ENGINEERING, 2002, 49 (09) :963-974
[8]  
FLAMMER J, 1983, CAN J OPHTHALMOL, V18, P115
[9]  
Frankhauser F, 1977, Surv Ophthalmol, V22, P131
[10]   Using unsupervised learning with independent component analysis to identify patterns of glaucomatous visual field defects [J].
Goldbaum, MH ;
Sample, PA ;
Zhang, ZH ;
Chan, KL ;
Hao, JC ;
Lee, TW ;
Boden, C ;
Bowd, C ;
Bourne, R ;
Zangwill, L ;
Sejnowski, T ;
Spinak, D ;
Weinreb, RN .
INVESTIGATIVE OPHTHALMOLOGY & VISUAL SCIENCE, 2005, 46 (10) :3676-3683