| Literature DB >> 35602611 |
Ashkan Nomani1, Yasaman Ansari2, Mohammad Hossein Nasirpour3, Armin Masoumian4, Ehsan Sadeghi Pour5, Amin Valizadeh6.
Abstract
Early diagnosis of breast cancer is an important component of breast cancer therapy. A variety of diagnostic platforms can provide valuable information regarding breast cancer patients, including image-based diagnostic techniques. However, breast abnormalities are not always easy to identify. Mammography, ultrasound, and thermography are some of the technologies developed to detect breast cancer. Using image processing and artificial intelligence techniques, the computer enables radiologists to identify chest problems more accurately. The purpose of this article was to review various approaches to detecting breast cancer using artificial intelligence and image processing. The authors present an innovative approach for identifying breast cancer using machine learning methods. Compared to current approaches, such as CNN, our particle swarm optimized wavelet neural network (PSOWNN) method appears to be relatively superior. The use of machine learning methods is clearly beneficial in terms of improved performance, efficiency, and quality of images, which are crucial to the most innovative medical applications. According to a comparison of the process's 905 images to those of other illnesses, 98.6% of the disorders are correctly identified. In summary, PSOWNNs, therefore, have a specificity of 98.8%. Furthermore, PSOWNNs have a precision of 98.6%, which means that, despite the high number of women diagnosed with breast cancer, only 830 (95.2%) are diagnosed. In other words, 95.2% of images are correctly classified. PSOWNNs are more accurate than other machine learning algorithms, SVM, KNN, and CNN.Entities:
Mesh:
Year: 2022 PMID: 35602611 PMCID: PMC9117073 DOI: 10.1155/2022/5667264
Source DB: PubMed Journal: Comput Intell Neurosci
Summary of related work.
| Author | Year | Type | Network | Result | Advantages | Disadvantages |
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| Dong et al. [ | 2022 | Breast cancer diagnosis and classification | Random forest and regression tree | The application of machine learning techniques like CART and random forests coupled with geographical methodologies provides a viable alternative for future inequalities studies | (i) Low complexity | (i) Possible overfitting |
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| Guha et al. [ | 2022 | Breast cancer risk factors | SEER-Medicare analysis | The incidence of AF in women after a breast cancer diagnosis is much higher. AF is strongly linked to a higher stage of breast cancer upon diagnosis. Women newly diagnosed with breast cancer who develop AF suffer an increased risk of cardiovascular death but not breast-cancer-related death | (i) Ability of risk assessment | (i) Needs feature extraction |
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| Chamieh et al. [ | 2022 | Breast cancer diagnosis using fine-needle aspiration cytology | Begg and Greenes method | Irrespective of the recommended technique, the FNAC test's specificity was always greater than its sensitivity. For all approaches, the probability ratios were positive. Both positive and negative yields were high, demonstrating the test's exact discriminating qualities. | (i) Technical assessment method | (i) Unable to diagnose illness type |
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| Thangarajan et al. [ | 2022 | Breast cancer biomarkers validated in plasma | BC gene expression profiling | Methylation status of SOSTDC1, DACT2, and WIF1 can distinguish BC from benign and control conditions with 100% sensitivity and 91% specificity. Therefore, SOSTDC1, DACT2, and WIF1 may be used as a supplemental diagnostic tool to distinguish noninvasive and invasive breast cancer from benign breast conditions and healthy individuals | (i) Using biomarkers instead of mathematical features | (i) Lower sensitivity |
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| Chakravarthy et al. [ | 2022 | Diagnosis of breast cancer | Multideep CNN | By fuzzing deep features for both datasets (97.93 percent for MIAS and 96.646 percent for INbreast), we achieved the highest classification accuracy among state-of-the-art frameworks. When the PCA was applied to combined deep features, classification performance did not improve, but execution time was shorter, resulting in a lower computing cost | (i) Low complexity | (i) Possible overfitting |
| Wang et al. [ | 2022 | Metastasis of breast cancer axillary lymph nodes forecasting | CNN | The T2WI sequence outperformed the other three sequences in the testing set, with accuracy and AUC of 0.933/0.989. In comparison with T1WI, which has accuracy and AUC of 0.691/0.806, the increase is substantial | (i) Ability of risk assessment | (i) Unable to diagnose the patient |
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| Melekoodappattu et al. [ | 2022 | Breast cancer detection | CNN and texture feature-based approach | Using our ensemble method, we measured 97.8% specificity and 98.6% accuracy for MIAS and 98.3% and 97.9% for DDSM. Experimental data indicate that the combination strategy enhances measurement metrics independently for each phase | (i) Low complexity | (i) Unable to diagnose illness type |
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| Gonçalves et al. [ | 2022 | Breast cancer detection | CNNs | VGG-16 produced F1-scores greater than 0.90 for all three networks, an increase from 0.66 to 0.92. Furthermore, compared to earlier research, we were able to improve the F1-score of ResNet-50 from 0.83 to 0.90 | (i) Comparative study | (i) Unable to diagnose illness type |
Figure 1Modalities of imaging.
Figure 2Sample benign images from different datasets like MIAS ((a) and (b)), DDSM ((e) and (f)), INbreast ((i) and (j)), BUS-1 ((m) and (n)), and BUS-2 ((q) and (r)). Sample malignant images from different datasets like MIAS ((c) and (d)), DDSM, ((g) and (g)), INbreast ((k) and (l)), BUS-1 ((o) and (p)), and BUS-2 ((s) and (t)).
Figure 3A description of a CNN architecture.
Figure 4The confusion matrix.
Figure 5The structure of CNN.
The presented CNN architecture layers.
| Layer | Name | Description |
|---|---|---|
| 1 | Image input | 256 × 256 × 1 images with “zero center” normalization |
| 2 | Convolution | 8 (3 × 3) convolutions with stride [1 1] and padding “same” |
| 3 | Batch normalization | Normalization |
| 4 | ReLU | Rectifier |
| 5 | Pooling | 2 × 2 max pooling with stride [2 2] and padding [0 0 0 0] |
| 6 | Convolution | 16 (3 × 3) convolutions with stride [1 1] and padding “same” |
| 7 | Batch normalization | Normalization |
| 8 | ReLU | Rectifier |
| 9 | Pooling | 2 × 2 max pooling with stride [2 2] and padding [0 0 0 0] |
| 10 | Convolution | 32 (3 × 3) convolutions with stride [1 1] and padding “same” |
| 11 | Batch normalization | Normalization |
| 12 | ReLU | Rectifier |
| 13 | Fully connected | 7 fully connected layers |
| 14 | SoftMax | SoftMax |
| 15 | Classification output | Cross entropy |
Figure 6The confusion matrix of the deep learning methods used for breast cancer diagnosis.
Figure 7The training process of the CNN approach.
Figure 8ROC region for the breast tumor segmentation in the MIAS dataset.
The comparison between the presented methods.
| Methods | Sensitivity (%) | Specificity (%) | Precision (%) | AUC | Accuracy (%) |
|---|---|---|---|---|---|
| KNN | 77.9 | 77.4 | 79.7 | 79.43 | 77.5 |
| SVM | 78.5 | 75.2 | 75.7 | 78.54 | 79.5 |
| PSOWNNs | 91.6 | 98.8 | 98.6 | 95.43 | 95.2 |
| CNN | 94.3 | 93.4 | 94.9 | 93.65 | 93.8 |
Figure 9CNN for Mini-MIAS dataset was used to visually assess breast tumor segmentation.