| Literature DB >> 24575126 |
Ammara Masood1, Adel Ali Al-Jumaily1.
Abstract
Image-based computer aided diagnosis systems have significant potential for screening and early detection of malignant melanoma. We review the state of the art in these systems and examine current practices, problems, and prospects of image acquisition, pre-processing, segmentation, feature extraction and selection, and classification of dermoscopic images. This paper reports statistics and results from the most important implementations reported to date. We compared the performance of several classifiers specifically developed for skin lesion diagnosis and discussed the corresponding findings. Whenever available, indication of various conditions that affect the technique's performance is reported. We suggest a framework for comparative assessment of skin cancer diagnostic models and review the results based on these models. The deficiencies in some of the existing studies are highlighted and suggestions for future research are provided.Entities:
Year: 2013 PMID: 24575126 PMCID: PMC3885227 DOI: 10.1155/2013/323268
Source DB: PubMed Journal: Int J Biomed Imaging ISSN: 1687-4188
Figure 1Computer aided diagnostic support system for skin cancer diagnosis.
In vivo imaging techniques for the diagnosis of skin cancer.
| Method | Advantages | Limitations |
|---|---|---|
| Photography [ | Affordable and easy data management. | Limited morphologic information. |
|
| ||
| Dermoscopy [ | Facilitating 20–70% magnification of the skin. | Qualitative and potentially subjective. |
|
| ||
| Multispectral imaging [ | Spectral imaging is quantitative and more objective. | Difficult interpretation because of the complexity of the optical processes of scattering and absorption. |
|
| ||
| Laser-based enhanced diagnosis [ | In vivo imaging of skin lesions at variable depths in horizontal planes and examination at a quasi-histological resolution without biopsy. | Processes in the reticular dermis and tumor invasion depth cannot be evaluated reliably. |
|
| ||
| Optical coherence tomography [ | Depth of invasion can be better measured with OCT than CSLM. | Limited resolution does not allow a differential diagnosis between benign and malignant lesions. |
|
| ||
| Ultrasound imaging [ | Can provide information about perfusion patterns of lymph nodes and other soft tissues that can be used to stage the tumor. | May overestimate or underestimate tumor thickness; accuracy of results depends heavily on the skill of examiner and anatomic site of lesion. |
|
| ||
| Magnetic resonance imaging [ | Obtaining information on the depth and extent of the underlying tissue involvement and can be used to measure melanoma thickness or volume. | The need for sufficient resolution and adequate number of images per sequence for discriminating skin lesions. |
Methods for segmentation of dermoscopic images.
| Method | Description | Related references |
|---|---|---|
| Thresholding | Determining threshold and then the pixels are divided into groups based on that criterion. It include bilevel and multithresholding | Histogram thresholding ([ |
|
| ||
| Color-based segmentation algorithms | Segmentation based on color discrimination. Include principle component transform/spherical coordinate transform | [ |
|
| ||
| Discontinuity-based segmentation | Detection of lesion edges using active contours/radial search techniques/zero crossing of Laplacian of Gaussian (LoG) | Active contours ([ |
|
| ||
| Region-based segmentation | Splitting the image into smaller components then merging subimages which are adjacent and similar in some sense. It includes Statistical region merging, multiscale region growing, and morphological flooding | Split and merge ([ |
|
| ||
| Soft computing | Methods involve the classification of pixels using soft computing techniques including neural networks, fuzzy logic, and evolutionary computation | Fuzzy logic ([ |
Assessment of diagnostic models based on quality assessment criteria.
| Criteria | Details Provided (% of models) | Details not Provided (% of models) |
|---|---|---|
| Image calibration | 51 | 49 |
| Preprocessing | 45 | 55 |
| Segmentation | 78 | 22 |
| Feature extraction | 71 | 29 |
| Feature selection | 54 | 46 |
| Test/train ratio | 42 | 58 |
| Taking care of balance in lesion classes for training | 32 | 68 |
| Comparative results | 55 | 45 |
| Cross-validation | 29 | 71 |
Figure 2Illustration of feature distribution used in dermoscopic studies in the literature.
Figure 3Working mechanism of artificial neural network.
Figure 4Principle of support vector machine.
Measures for evaluating performance of a classifier.
| Evaluation parameters | |
|---|---|
|
| |
|
| |
|
| |
|
| |
| ROC curve − a plot of the true positive TP-rate versus false positive FP-rate | |
|
| |
|
| |
|
| |
| Index of suspicion | |
|
| |
|
| |
| Diagnostic odds ratio [ | |
| Distance of a real classifier from the ideal one |
Classification methods used in the literature for skin cancer diagnosis.
| Classification method | Related references |
|---|---|
|
| [ |
|
| |
| Decision trees | [ |
|
| |
| Statistical (discriminant analysis/logistic regression/multifactorial analysis) | [ |
|
| |
| Rule-based classification | [ |
|
| |
| Artificial neural network | [ |
|
| |
| Support vector machine (SVM) | [ |
|
| |
| Extreme learning machine | [ |
|
| |
| Others (Gaussian maximum likelihood, Bayesian classifier) | [ |
Figure 5Illustration of classification methods as used by existing diagnostic systems.
Summary of classification performance of some skin cancer detection methods.
| Source | year | No. of features selected | Classifier | Total images | Melanoma % | Dysplastic nevi % | Benign | Sens % | Spec % | Accuracy |
|---|---|---|---|---|---|---|---|---|---|---|
| [ | 1993 | CART | 353 | 62 | 38 | 94 | 88 | |||
| [ | 1994 | CART | 404 | 59 | 41 | 90 | 88 | 80 | ||
| [ | 1994 | 22 | D.A. | 164 | 11 | 89 | 88 | 89 | ||
| [ | 1994 | ANN | 200 | 40 | 30 | 30 | 95 | 88 | ||
| [ | 1994 | 14 | ANN | 240 | 50 | 16.7 | 33.3 | 79.5 | 86.3 | 82.9 |
| [ | 1997 | Logistic regression | 170 | 44 | 56 | 93 | 67 | |||
| [ | 1998 | 22 | Discriminant analysis | 917 | 7 | 93 | 93 | 95 | ||
| [ | 1998 | 16 | ANN | 120 | 32.5 | 48.4 | 27.5 | 90 | 74 | |
| [ | 1999 | 26 | Discriminant analysis | 383 | 4.7 | 95.3 | 100 | 92 | ||
| [ | 1999 | 26 | ANN | 44 | 43.2 | 56.8 | 97.7 | 100 | ||
| [ | 1999 | 13 | Discriminant analysis | 147 | 38.8 | 61.2 | 88 | 81 | 85 | |
| [ | 2000 | 38 | ANN | 315 | 13.3 | 86.7 | 92.9 | 97.8 | ||
| [ | 2001 | 21 | kNN | 5363 | 1.8 | 18.8 | 79.4 | 87 | 92 | |
| [ | 2001 | 13 | Linear classification | 246 | 25.6 | 45.1 | 29.2 | 100 | 85 | |
| [ | 2002 | 13 | ANN | 588 | 36.9 | 63.1 | 94 | |||
| [ | 2002 | 10 | ANN | 147 | 38.8 | 61.2 | 93 | 92.8 | ||
| [ | 2003 | 1 | Linear classifier | 100 | 50 | 50 | 78 | 90 | ||
| [ | 2003 | 38 | LDA + kNN + decision tree | 152 | 27.6 | 72.4 | 81 | 74 | ||
| [ | 2004 | 10 | Linear classifier | 840 | 46.5 | 53.5 | 95 | 78 | ||
| [ | 2004 | SVM (third degree polynomial) | 977 | 5.12 | 94.88 | 96.4 | 87.16 | |||
| [ | 2005 | NR | SVM | 477 | 8.8 | 91.2 | 84 | 72 | ||
| [ | 2005 | 20 | ANN | 34 | 41 | 59 | 86 | 100 | ||
| [ | 2006 | 200 | SVM | 22 | 45 | 65 | 70 | |||
| [ | 2006 | 28 | Decision tree | 224 | 51.8 | 48.2 | 51 | 97 | ||
| [ | 2006 | 3 | LR+ multivariate model + ROC | 132 | 17.4 | 82.6 | 60.9 | 95.4 | 89.4 | |
| [ | 2007 | 18 | SVM | 564 | 15.6 | 84.4 | 93.3 | 92.3 | ||
| [ | 2007 | 2 | Logistic regression (LR) | 260 | 17.7 | 18.1 | 64.2 | 91.3 | 81–91 | |
| [ | 2008 | 10 | Multiple classifiers (SVM, GML, kNN) | 358 | 37.4 | 32.96 | 29.6 | 75.69 | ||
| [ | 2011 | 33 | kNN | 83 | 55.4 | 44.6 | 60.7 | 80.5 | 66.7 | |
| [ | 2011 | 6 | K-NN | 98 | 52 | 48 | 76.4 | 70.21 | 73.47 | |
| [ | 2012 | 12 | Multilayer percentron | 102 | 50 | 50 | 70.5 | 87.5 | 76 |