| Literature DB >> 35463254 |
Jian Huang1,2,3, Jing Li1,2,3, Zheming Li1,2,3, Zhu Zhu1,2,3, Chen Shen1,2,3, Guoqiang Qi1,2,3, Gang Yu1,2,3,4.
Abstract
With the continuous development and improvement of artificial intelligence technology, machine learning technology has also been extensively developed, which has promoted the development of computer vision, image processing, natural language processing, and other fields. Purpose. This article aims to apply the image processing technology based on machine learning in the detection of childhood diseases and propose the application of image processing technology to the detection of childhood diseases. This article introduces machine learning, image recognition technology, and related algorithms in detail and experiments on image recognition technology based on machine learning. The experimental results show that image recognition technology based on machine learning can well identify white blood cells that are difficult to distinguish with the naked eye, with a recognition rate of up to 90%. Applying image recognition technology based on machine learning in disease diagnosis has greatly improved the level of medical diagnosis.Entities:
Mesh:
Year: 2022 PMID: 35463254 PMCID: PMC9020906 DOI: 10.1155/2022/5658641
Source DB: PubMed Journal: Comput Intell Neurosci
Figure 1Application of machine learning in daily life.
Figure 2The framework of machine learning.
Application of each model in disease diagnosis.
| Years | Model | Field |
|---|---|---|
| 2013–2014 | SAE, CNN, DBM + SVM | Cancer diagnosis |
| 2014 | DBM | Chronic gastritis diagnosis |
| 2014–2015 | SAE | AD classification |
| 2015 | CNN | Nuclear cataract classification |
Application of each model in medical image processing.
| Years | Model | Field |
|---|---|---|
| 2013 | CNN and DBN | Image key point discovery |
| 2013–2014 | CNN | Automatic segmentation of medical images |
| 2014 | SAE | MRI image reconstruction |
Figure 3Image preprocessing flow chart.
Figure 4Flow chart of statistical pattern recognition.
Figure 5Flow chart of structural pattern recognition.
Figure 6Six categories of diseases commonly seen in children.
Convolutional neural network structure for high-resolution color white blood cell recognition.
| Input | Conv1 | Pool1 | Conv2 | Pool2 | Conv3 | Pool3 | Fc4 | Fc5 | Fc6 | |
|---|---|---|---|---|---|---|---|---|---|---|
| Fiter size | 11 ∗ 11 | 3 ∗ 3 | 5 ∗ 5 | 3 ∗ 3 | 3 ∗ 3 | 3 ∗ 3 | ||||
| Channel | 3 | 96 | 256 | 256 | 256 | 256 | 256 | 4096 | 4096 | 3 |
| Strides | 3 | 2 | 1 | 2 | 1 | 2 | ||||
| Padding | 2 | 1 | 1 |
Summary table of PCA method experimental results.
| Error distribution value | Quantity | Percentage |
|---|---|---|
| 0 | 60 | 60 |
| −1 to 1 | 21 | 21 |
| −2 to 2 | 9 | 9 |
| −3 to 3 | 7 | 7 |
| −3.5 to 3.5 | 3 | 3 |
| Total | 100 | 100 |
Summary table of experimental results of the FLD method.
| Error distribution value | Quantity | Percentage |
|---|---|---|
| 0 | 51 | 51 |
| −1 to 1 | 26 | 26 |
| −2 to 2 | 10 | 10 |
| −3 to 3 | 9 | 9 |
| −3.5 to 3.5 | 4 | 4 |
| Total | 100 | 100 |
Figure 7Results of white blood cell recognition rate based on different methods.
Figure 8The influence of the number of different convolution kernels on the image recognition rate: (a) convolution kernel (five) and (b) convolution kernel (six).
Figure 9Comparison of image recognition rates of two different methods.
Figure 10Image recognition rate under different resolutions and different networks.