| Literature DB >> 35330177 |
Pravin R Kshirsagar1, Hariprasath Manoharan2, S Shitharth3, Abdulrhman M Alshareef4, Nabeel Albishry5, Praveen Kumar Balachandran6.
Abstract
Skin problems are among the most common ailments on Earth. Despite its popularity, assessing it is not easy because of the complexities in skin tones, hair colors, and hairstyles. Skin disorders provide a significant public health risk across the globe. They become dangerous when they enter the invasive phase. Dermatological illnesses are a significant concern for the medical community. Because of increased pollution and poor diet, the number of individuals with skin disorders is on the rise at an alarming rate. People often overlook the early signs of skin illness. The current approach for diagnosing and treating skin conditions relies on a biopsy process examined and administered by physicians. Human assessment can be avoided with a hybrid technique, thus providing hopeful findings on time. Approaches to a thorough investigation indicate that deep learning methods might be used to construct frameworks capable of identifying diverse skin conditions. Skin and non-skin tissue must be distinguished to detect skin diseases. This research developed a skin disease classification system using MobileNetV2 and LSTM. For this system, accuracy in skin disease forecasting is the primary aim while ensuring excellent efficiency in storing complete state information for exact forecasts.Entities:
Keywords: LSTM; MobileNetV2; deep learning; learning algorithms; skin disease
Year: 2022 PMID: 35330177 PMCID: PMC8951408 DOI: 10.3390/life12030426
Source DB: PubMed Journal: Life (Basel) ISSN: 2075-1729
Figure 1The fundamental criteria for a technique for detecting skin diseases.
Figure 2System architecture.
Figure 3Diagnosis of skin disease.
Skin diseases and their symptoms.
| Diseases | Symptoms |
|---|---|
| Acne vulgaris | Marks on the face, little pustules, and small lumps |
| Atopic dermatitis | Itching and irritation, rough, hypersensitivity skin that is genetic, with a red rash and crusty, thick skin |
| Benign skin tumors | Development that is not harmful, black drawing on the skin, and a smooth, rough, and oily texture |
| Mastitis | Infectious, heated, and uncomfortable tumor in a woman’s breast |
| Viral warts | Infection, any region of the organism, exfoliation of the afflicted area |
| Diaper candidiasis | Fungal, a diaper worn across two legs, urine exposure, red, swelling, seeping, and fluid |
| Folliculitis | Bacterial, tiny pus vesicles, and little red lumps |
| Carbuncle | Infection, compromised immune system, diabetes mellitus, and little pimples on the afflicted area |
| Eczema | Discoloration, cracking, and peeling |
Figure 4The architecture of MobileNet V2.
Figure 5Flowchart for skin disease detection system.
Figure 6Performance measurement and comparison: (a) recall; (b) precision; (c) F-measure; (d) accuracy.
Input data set using MobileNet V2 and LSTM.
| Number of States | Input Gate | Forget Gate | Cell State Gate | Reference Output |
|---|---|---|---|---|
| 1 | 139 | 124 | 144 | 135.66 |
| 2 | 126 | 121 | 128 | 125 |
| 3 | 143 | 125 | 168 | 145.33 |
| 4 | 159 | 121 | 182 | 154 |
| 5 | 170 | 147 | 188 | 168.33 |
The different methods’ performance measures.
| Algorithms | Recall | Precision | F-Measure | Accuracy |
|---|---|---|---|---|
| FTNN | 80.65 | 85.07 | 86.07 | 80.23 |
| CNN | 81.75 | 86.07 | 86.61 | 81.67 |
| Depth-based CNN | 80.23 | 80.49 | 82.56 | 82.93 |
| Channel boost CNN | 81.24 | 82.39 | 82.98 | 83.45 |
| MobileNet V1 | 85.40 | 90.92 | 89.12 | 83.34 |
| MobileNet V2 | 87.51 | 91.69 | 90.23 | 85.23 |
| MobileNet V2–LSTM | 89.34 | 93.34 | 92.68 | 86.57 |
Figure 7Comparison of MobileNet V2–LSTM (a) DC vs. WDA and (b) enhanced vs. mean values.
The progress of disease growth.
| Algorithms | Core of Disease | Whole Disease Area | Enhanced | Mean |
|---|---|---|---|---|
| CNN | 7.965 | 11.567 | 4.743 | 0.89 |
| Depth-based CNN | 7.234 | 11.459 | 4.369 | 0.72 |
| Channel boost CNN | 7.348 | 11.270 | 4.421 | 0.81 |
| MobileNet V1 | 7.309 | 11.552 | 4.916 | 0.90 |
| MobileNet V2 | 7.498 | 11.894 | 4.604 | 0.92 |
| MobileNet V2–LSTM | 7.889 | 11.999 | 4.897 | 0.95 |
Execution time.
| Algorithms | Maximum Iteration | Time of Execution |
|---|---|---|
| CNN | 90 | 162.32 |
| Depth-based CNN | 90 | 167.90 |
| Channel boost CNN | 80 | 156.23 |
| MobileNet V1 | 90 | 118.15 |
| MobileNet V2 | 70 | 107.89 |
| MobileNet V2–LSTM | 60 | 99.67 |
Figure 8MobileNet V2 execution time using LSTM and other methods.
Figure 9Viewpoint of images: (a) negative; (b) multi-scale; (c) dehaze correlated.