| Literature DB >> 34898463 |
Howard Maile1, Ji-Peng Olivia Li2, Daniel Gore2, Marcello Leucci2, Padraig Mulholland1,2,3, Scott Hau2, Anita Szabo1, Ismail Moghul2, Konstantinos Balaskas2, Kaoru Fujinami1,2,4,5, Pirro Hysi6,7, Alice Davidson1, Petra Liskova8,9, Alison Hardcastle1, Stephen Tuft1,2, Nikolas Pontikos1,2.
Abstract
BACKGROUND: Keratoconus is a disorder characterized by progressive thinning and distortion of the cornea. If detected at an early stage, corneal collagen cross-linking can prevent disease progression and further visual loss. Although advanced forms are easily detected, reliable identification of subclinical disease can be problematic. Several different machine learning algorithms have been used to improve the detection of subclinical keratoconus based on the analysis of multiple types of clinical measures, such as corneal imaging, aberrometry, or biomechanical measurements.Entities:
Keywords: artificial intelligence; cornea; corneal disease; corneal imaging; corneal tomography; decision support systems; keratoconus; keratometry; machine learning; subclinical
Year: 2021 PMID: 34898463 PMCID: PMC8713097 DOI: 10.2196/27363
Source DB: PubMed Journal: JMIR Med Inform
Figure 1Filtering steps taken to accept or exclude studies in the systematic review.
Summary of the 26 published studies that included the use of machine learning for the detection of subclinical keratoconus.
| Study | System | Number of eyes | Fellow eyea | Input types | Method | Results (%) | ||
|
|
| Normal | Subclinical keratoconus |
|
|
| Sensitivity | Specificity |
| Arbelaez et al [ | Sirius | 1259 | 426 | No | Elevation, keratometry, pachymetry, and aberrometry | SVMb | 92 | 97.7 |
| Saad et al [ | Orbscan | 69 | 34 | No | Pachymetry, keratometry, elevation, and Displacement | DAc | 92 | 96 |
| Smadja et al [ | GALILEI | 177 | 47 | Yes | Keratometry, pachymetry, elevation, aberrometry, demographic, and indices | DTd | 93.6 | 97.2 |
| Ramos-Lopez et al [ | CSO topography system | 50 | 24 | No | Elevation and displacement | Linear regression | 33 | 78 |
| Cao et al [ | Pentacam | 39 | 49 | No | Keratometry, pachymetry, and demographic | RFe, SVM, K-nearest neighbors, LoRf, DA, Lasso regression, DT, and NNg | 94 | 90 |
| Buhren et al [ | Orbscan IIz | 245 | 32 | No | Keratometry, pachymetry, aberrometry, and elevation | DA | 78.1 | 83.3 |
| Chan et al [ | Orbscan IIz | 104 | 24 | Yes | Pachymetry, keratometry, elevation, and displacement | DA | 70.8 | 98.1 |
| Kovacs et al [ | Pentacam | 60 | 15 | Yes | Keratometry, pachymetry, elevation, indices, and displacement | NN | 90 | 90 |
| Saad et al [ | OPD-scan | 114 | 62 | Yes | Keratometry, aberrometry, and indices | DA | 63 | 82 |
| Ruiz Hidalgo et al [ | Pentacam HR | 194 | 67 | No | Keratometry, pachymetry, and aberrometry | SVM | 79.1 | 97.9 |
| Ruiz Hidalgo et al [ | Pentacam HR | 44 | 23 | No | Keratometry, pachymetry, and indices | SVM | 61 | 75 |
| Xu et al [ | Pentacam HR | 147 | 77 | Yes | Pachymetry, elevation, and keratometry | DA | 83.7 | 84.5 |
| Ambrosio et al [ | Pentacam+Corvis ST | 480 | 94 | Yes | Pachymetry, elevation, keratometry, and Biomechanical | RF, SVM, and LoR | 90.4 | 96 |
| Sideroudi et al [ | Pentacam | 50 | 55 | No | Keratometry | LoR | 91.7 | 100 |
| Francis et al [ | Corvis ST | 253 | 62 | Yes | Biomechanical | LoR | 90 | 91 |
| Yousefi et al [ | SS-1000 CASIA | 1970 | 796 | No | Elevation, pachymetry, and aberrometry | Unsupervised | 88 | 14 |
| Lopes et al [ | Pentacam HR | 2980 | 188 | Yes | Pachymetry, elevation, indices, and displacement | DA, SVM, naive Bayes, NN, and RF | 85.2 | 96.6 |
| Steinberg et al [ | Pentacam+Corvis ST | 105 | 50 | Yes | Pachymetry, elevation, keratometry, and biomechanical | RF | 63 | 83 |
| Issarti et al [ | Pentacam | 312 | 90 | Yes | Elevation and pachymetry | NN | 97.8 | 95.6 |
| Chandapura et al [ | RCTVue+Pentacam | 221 | 72 | Yes | Keratometry, elevation, pachymetry, aberrometry, and indices | RF | 77.2 | 95.6 |
| Xie at al [ | Pentacam HR | 1368 | 202 | No | Heat maps | CNNh | 76.5 | 98.2 |
| Kuo et al [ | TMS-4+Pentacam+Corvis ST | 170 | 28 | No | Heat maps | CNN | 28.5 | 97.2 |
| Shi et al [ | Pentacam+ultrahigh resolution optical coherence tomography | 55 | 33 | Yes | Keratometry, elevation, pachymetry, indices, and demographic | NN | 98.5 | 94.7 |
| Toprak et al [ | MS-39 | 66 | 50 | Yes | Keratometry, pachymetry, and displacement | LoR | 94 | 98.5 |
| Issarti et al [ | Pentacam HR | 304 | 117 | Yes | Elevation and Pachymetry | NN | 85.2 | 70 |
| Lavric et al [ | SS-1000 CASIA | 1970 | 791 | No | Keratometry, pachymetry, and aberrometry | 25 machine learning methods compares | 89.5 | 96 |
aFellow eye indicates whether the study defined subclinical keratoconus as the fellow eye of an individual with apparently unilateral keratoconus, with no clinical or topographical features of keratoconus.
bSVM: support vector machine.
cDA: discriminant analysis.
dDT: decision tree.
eRF: random forest.
fLoR: logistic regression.
gNN: neural network.
hCNN: convolutional neural network.
Figure 2Organizational diagram of relevant data types reported to be used for the detection of subclinical keratoconus.
Figure 3Organizational diagram of relevant machine learning algorithms used for the detection of subclinical keratoconus.
Figure 4Schematic diagram illustrating the 4 basic corneal parameters that can be measured using corneal imaging. (A) pachymetry. (B) displacement: distance between the apex of the cornea and the point of minimum thickness. (C) and (D) represent 2 methods of calculating the best-fit sphere (BFS). In (C) the BFS is fitted to both the normal peripheral posterior surface (blue) and the abnormal anterior protrusion of the central posterior surface (green). In (D) the BFS is fitted to only the normal peripheral posterior surface (blue) excluding the abnormal central posterior surface (green), leading to a larger relative elevation than in (C). (E) the smallest radius of curve of the astigmatic corneal surface corresponds to the largest refractive power (Kmax) and the largest radius of curve corresponds to the smallest refractive power (Kmin). CCT: central corneal thickness.
Figure 5Heat maps of a subclinical keratoconus eye derived from Scheimpflug corneal imaging using the Pentacam HR device. The axial/sagittal map (A) depicts the curvature of the anterior corneal surface in dioptres and shows mild inferior steepening, while the pachymetry map (C) shows thinning in the same region. The front and back elevation maps (B and D, respectively) show a moderate increase in inferior elevation. BFS: best-fit sphere; OS: left eye.