| Literature DB >> 31940932 |
Chuan-Yu Chang1, Kathiravan Srinivasan2, Mao-Cheng Chen1, Shao-Jer Chen3.
Abstract
In recent years, there are several cost-effective intelligent sensing systems such as ultrasound imaging systems for visualizing the internal body structures of the body. Further, such intelligent sensing systems such as ultrasound systems have been deployed by medical doctors around the globe for efficient detection of several diseases and disorders in the human body. Even though the ultrasound sensing system is a useful tool for obtaining the imagery of various body parts, there is always a possibility of inconsistencies in these images due to the variation in the settings of the system parameters. Therefore, in order to overcome such issues, this research devises an SVM-enabled intelligent genetic algorithmic model for choosing the universal features with four distinct settings of the parameters. Subsequently, the distinguishing characteristics of these features are assessed utilizing the Sorensen-Dice coefficient, T-test, and Pearson's R measure. It is apparent from the results of the SVM-enabled intelligent genetic algorithmic model that this approach aids in the effectual selection of universal features for the breast cyst images. In addition, this approach also accomplishes superior accuracy in the classification of the ultrasound image for four distinct settings of the parameters.Entities:
Keywords: Pearson’s R measure; SVM-enabled intelligent genetic algorithmic model; Sorensen-Dice coefficient; T-test; breast cyst imagery; ultrasound sensing systems
Year: 2020 PMID: 31940932 PMCID: PMC7013744 DOI: 10.3390/s20020432
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Causes of cancer death, 2015 and 2016 (Unit: Persons, %).
| ICD-10 Mortality NO. | Causes of Cancer Death | 2016 | 2015 | ||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|
| Rank | Number of Deaths | % of All Deaths | Per 100,000 Population | Rank | Number of Deaths | % of All Deaths | Per 100,000 Population | ||||
| Crude Death Rate | Age-Adjusted Death Rate | Crude Death Rate | Age-Adjusted Death Rate | ||||||||
| C00–C97 | Malignant neoplasms | 47,760 | 100.0 | 203.1 | 126.8 | 46,829 | 100.0 | 199.6 | 128.0 | ||
| C33–C34 | Cancers of trachea, bronchus and lung | 1 | 9372 | 19.6 | 39.9 | 24.4 | 1 | 9232 | 19.7 | 39.3 | 24.7 |
| C22 | Cancers of liver and intrahepatic bile ducts | 2 | 8353 | 17.5 | 35.5 | 22.2 | 2 | 8258 | 17.6 | 35.2 | 22.8 |
| C18–C21 | Cancers of colon, rectum and anus | 3 | 5722 | 12.0 | 24.3 | 14.6 | 3 | 5687 | 12.1 | 24.2 | 14.9 |
| C50 | Cancer of breast (Female) | 4 | 2176 | 4.6 | 18.4 | 11.8 | 4 | 2141 | 4.6 | 18.2 | 12.0 |
| C00–C06, C09–C10, C12–C14 | Cancer of oral cavity | 5 | 2936 | 6.1 | 12.5 | 8.3 | 5 | 2667 | 5.7 | 11.4 | 7.8 |
| C61 | Cancer of prostate | 6 | 1347 | 2.8 | 11.5 | 6.8 | 6 | 1231 | 2.6 | 10.5 | 6.4 |
| C16 | Cancer of stomach | 7 | 2315 | 4.8 | 9.8 | 5.8 | 7 | 2326 | 5.0 | 9.9 | 6.1 |
| C25 | Cancer of pancreas | 8 | 1996 | 4.2 | 8.5 | 5.3 | 8 | 1948 | 4.2 | 8.3 | 5.3 |
| C15 | Cancer of oesophagus | 9 | 1731 | 3.6 | 7.4 | 4.8 | 9 | 1807 | 3.9 | 7.7 | 5.1 |
| C56, C57.0–C57.4 | Cancer of ovary | 10 | 656 | 1.4 | 5.6 | 3.6 | 12 | 529 | 1.1 | 4.5 | 3.0 |
Figure 1The schematic process flow diagram of the SVM (support vector machine)-enabled intelligent genetic algorithmic model.
Figure 2(a) General representation of the ultrasound breast cyst imagery, (b) marked and segregated ROI (region of interest) portions from this imagery.
Histogram feature sets.
| Feature Name | Feature Number |
|---|---|
| Energy | F1 |
| Entropy | F2 |
| Kurtosis | F3 |
| Mean | F4 |
| Skewness | F5 |
| Standard Deviation | F6 |
| Variance | F7 |
Gray-level spatial dependence matrix feature sets.
| Feature Name | Feature Number |
|---|---|
| Correlation | F8 |
| Difference of entropy | F9 |
| Difference of variance | F10 |
| Sum of average | F11 |
| Sum of entropy | F12 |
| Sum of squares | F13 |
| Sum of variance | F14 |
| Contrast | F15 |
| Energy | F16 |
| Entropy | F17 |
| Local homogeneity | F18 |
| Cluster shade | F19 |
| Cluster prominence | F20 |
Statistical feature matrix feature.
| Feature Name | Feature Number |
|---|---|
| Dissimilarity | F21 |
Gray level run-length textural matrix feature sets.
| Feature Name | Feature Number |
|---|---|
| Short-run emphasis | F22 |
| Long-run emphasis | F23 |
| Gray-level uniformity | F24 |
| Run-length uniformity | F25 |
| Run percentage | F26 |
Laws’ texture energy matrix feature sets.
| Feature Name | Feature Number |
|---|---|
| LE mean | F27 |
| EL mean | F28 |
| SL mean | F29 |
| EE mean | F30 |
| LS mean | F31 |
| LE variance | F32 |
| EL variance | F33 |
| SL variance | F34 |
| EE variance | F35 |
| LS variance | F36 |
Neighboring gray level dependence matrix feature sets.
| Feature Name | Feature Number |
|---|---|
| Small number emphasis | F37 |
| Large number emphasis | F38 |
| Number non-uniformity | F39 |
| Second moment | F40 |
| Entropy | F41 |
Neighborhood gray tone difference matrix feature sets.
| Feature Name | Feature Number |
|---|---|
| Busyness | F42 |
| Coarseness | F43 |
| Complexity | F44 |
| Contrast | F45 |
| Textural Strength | F46 |
Wavelet transform feature sets.
| Feature Name | Feature Number(s) |
|---|---|
| Histogram features | F47–F53 |
| GLSDM features | F54–F66 |
| SFM feature | F67 |
| GLRLM features | F68–F72 |
| Mean | F73 |
| Standard deviation | F74 |
| Laws’ features | F75–F84 |
| NGLDM features | F85–F89 |
| NGTDM features | F90–F94 |
Fourier features—local Fourier coefficients.
| Feature Name | Feature Number(s) |
|---|---|
| Means of eight magnitudes | F95–F102 |
| Means of eight phase angles | F103–F110 |
| Standard deviations of the eight magnitudes | F111–F118 |
| Standard deviations of the eight phase angles | F119–F126 |
Figure 3The schematic diagram of the binary encoding of the chromosome.
Figure 4The schematic flow diagram for selecting the set of features utilizing the intelligent genetic algorithmic approach.
The four distinct settings of the parameters in the ultrasound sensing system (GELOGIQ 700).
| Parameter Setting Number | Details |
|---|---|
| GELOGIQ700-Parameter Setting-1 | The probe is a B-mode linear array. The depth range = 4 cm; dynamic range = 66 dB; gain = 36; edge enhance = E3; gray map = MD; frame average setting = A3. |
| GELOGIQ700-Parameter Setting-2 | The probe is a B-mode linear array. The depth range = 4 cm; dynamic range = 69 dB; gain = 35; edge enhance = E2; gray map = MC; frame average setting = A3. |
| GELOGIQ700-Parameter Setting-3 | The probe is a B-mode linear array. The depth range = 3 cm; dynamic range = 69 dB; gain = 34; edge enhance = E3; gray map = MC; frame average setting = A3. |
| GELOGIQ700-Parameter Setting-4 | The probe is a B-mode linear array. The depth range = 3 cm; dynamic range = 63 dB; gain = 34; edge enhance = E2; gray map = MD; frame average setting = A4. |
Figure 5Ultrasound breast cyst image for four distinct settings of the parameters acquired from the same ultrasound sensing system (GELOGIQ 700). Breast cyst images acquired from (a) Parameter Setting-1, (b) Parameter Setting-2, (c) Parameter Setting-3, and (d) Parameter Setting-4.
Classification results of the SVM-enabled intelligent genetic algorithmic model when it chooses five universal features.
| Ultrasound Sensing System Setting Detail | Accuracy Rate (%) |
|---|---|
| Parameter Setting-1 | 98.42 |
| Parameter Setting-2 | 96.81 |
| Parameter Setting-3 | 97.52 |
| Parameter Setting-4 | 94.27 |
| Mean | 96.75 |
Classification results of the SVM-enabled intelligent genetic algorithmic model when it chooses 10 universal features.
| Ultrasound Sensing System Setting Detail | Accuracy Rate (%) |
|---|---|
| Parameter Setting-1 | 98.35 |
| Parameter Setting-2 | 98.86 |
| Parameter Setting-3 | 98.27 |
| Parameter Setting-4 | 95.81 |
| Mean | 97.82 |
| Feature sets | F4, F5, F22, F26, F30, F95, F108, F109, F113, F124 |
Classification results of the SVM-enabled intelligent genetic algorithmic model when it chooses 15 universal features.
| Ultrasound Sensing System Setting Detail | Accuracy Rate (%) |
|---|---|
| Parameter Setting-1 | 99.14 |
| Parameter Setting-2 | 98.48 |
| Parameter Setting-3 | 98.27 |
| Parameter Setting-4 | 96.02 |
| Mean | 97.98 |
| Feature sets | F4, F5, F14, F22, F25, F29, F77, F103, F106, F108, F109, F113, F115, F121, F124 |
Classification results of the SVM-enabled intelligent genetic algorithmic model when it chooses five features in each parameter setting.
| Ultrasound Sensing System Setting Detail | The Best Feature Sets | Accuracy Rate (%) |
|---|---|---|
| Parameter Setting-1 | F4, F5, F105, F121, F11 | 99.00 |
| Parameter Setting-2 | F4, F29, F37, F19, F1 | 97.17 |
| Parameter Setting-3 | F39, F107, F6, F37, F1 | 98.04 |
| Parameter Setting-4 | F4, F15, F51, F47, F124 | 96.91 |
Classification results of the SVM-enabled intelligent genetic algorithmic model when it chooses 10 features in each parameter setting.
| Ultrasound Sensing System Setting Detail | The Best Feature Sets | Accuracy Rate (%) |
|---|---|---|
| Parameter Setting-1 | F4, F5, F105, F3, F11, F40, F6, F1, F2, F7 | 99.34 |
| Parameter Setting-2 | F4, F29, F9, F22, F1, F12, F8, F37, F5, F32 | 98.94 |
| Parameter Setting-3 | F4, F107, F5, F37, F1, F2, F3, F6, F113, F9 | 98.42 |
| Parameter Setting-4 | F4, F15, F5, F17, F123, F109, F1, F104, F106, F2 | 96.86 |
| Mean | 98.39 |
Classification results of the SVM-enabled intelligent genetic algorithmic model when it chooses 15 features in each parameter setting.
| Ultrasound Sensing System Setting Detail | The Best Feature Sets | Accuracy Rate (%) |
|---|---|---|
| Parameter Setting-1 | F4, F5, F105, F3, F11, F40, F6, F1, F2, F7, F10, F13, F9, F12, F8 | 99.27 |
| Parameter Setting-2 | F4, F29, F9, F22, F1, F12, F8, F37, F5, F32, F48, F2, F6, F10, F7 | 98.94 |
| Parameter Setting-3 | F4, F107, F5, F37, F1, F2, F3, F6, F113, F9, F10, F15, F11, F21, F16 | 98.38 |
| Parameter Setting-4 | F4, F15, F5, F17, F123, F109, F1, F104, F106, F2, F3, F6, F7, F9, F11 | 96.31 |
| Mean | 98.22 |
Classification results of SVM-enabled intelligent genetic algorithmic model and peer approaches when chooses 10 features in each parameter setting.
| Ultrasound Sensing System Setting Detail | The SVM-Enabled Intelligent Genetic Algorithmic Model | Chang’s Approach [ | Xie’s Model [ |
|---|---|---|---|
| Parameter Setting-1 | 98.35% | 99.80% | 95.87% |
| Parameter Setting-2 | 98.86% | 97.79% | 96.23% |
| Parameter Setting-3 | 98.27% | 97.76% | 96.72% |
| Parameter Setting-4 | 95.81% | 95.09% | 92.12% |
| Mean | 97.82% | 97.58% | 95.24% |
| The best feature sets | F4, F5, F26, F22, F30, F95, F108, F109, F113, F124 | F4, F112, F44, F99, F122, F78, F11, F120, F5, F22 | F6, F101, F98, F44, F56, F2, F104, F31, F113, F108 |