IMPROVED DEMNTIA IMAGES DETECTION AND CLASSIFICATION USING TRANSFER LEARNING BASE CONVULATION MAPPING WITH ATTENTION LAYER AND XGBOOST CLASSIFIER

Article History:Received:11 november 2020; Accepted: 27 December 2020; Published online: 05 April 2021 ABSTRACT : A classification scheme for the etiology of brain disease based on magnetic resonance imaging is proposed in this paper. Then, attention-based, transfer learning (Extracting variable characteristics of patterns from MRI scans) was used to generate more accurate predictive patterns, and finally, features were trained and used to classify fMRI data to Boost derived hyper-parameters were obtained and evaluated to identify different patterns of dementia risk. Typically-to-to-independent variable extractions are performed by using gradient boosting and then produces derived variables. The MRI in the system is pulled from the ADNI database. When using Feature extractor's technique, we find that most features are extracted at an acceptable speeds. The experimental results proved that the proposed approach can be applied to the task of classifying output in the proper manner. The method would help to increase precision and accuracy by (almost) 4.2 percent, while keeping recall at (virtually) 94.6%


INTRODUCTION
Nowadays, for those of the age 50 and up, Dementia has become a serious health concern. In Europe, about two and a half million new cases with dementia-related diagnoses are being made each year. Dementia is a type of incremental and progressive dementia. It is not only seen in older people, but more of them have warned the researchers about the neuro-disorder that leads to a lack of memory and a later recall from memory. DIA may help patients slow it down to a certain degree if early diagnosis is possible. The majority of scientists claim that two proteins are predominant in the brain. Beta-Amyloid, an abnormal level, is betaamyloid which forms and becomes one of plaque that interfereses with cell activity Othe other is called tau, which often goes beyond the neuron's transport structure, and forms neurofibrillary tangles that disables neuron movement According to an analysis of current and possible future demographics, there will be more than 120 million individuals with dementia by the year 2050, as well as 75 million. If everybody was granted an equal chance, our disparities would almost completely vanish. Today, Dementia has become one of the world's biggest health problems for people aged 50-70. About 2,5 million individuals were introduced to Europe's pool of dementia-related problems. Indeed, dementia is a neurological condition that causes progressive and continuous memory loss. Researchers have observed that it effects a larger percentage of the elderly than young people, but has strengthened their interest to study neurodisorders resulting in memory loss [24]. Dementia can help the patient to calm down to some degree if diagnosed at an early stage. The majority of scientists claim that two proteins are predominant in the brain. Beta-Amyloid, an abnormal level, is beta-amyloid which forms and becomes one of plaque that interferes with cell activity other is called tau, which often goes beyond the neuron's transport structure, and forms neurofibrillary tangles that disables neuron movement According to an analysis of current and possible future demographics, there will be more than 120 million individuals with dementia by the year 2050, as well as 75 million. If everybody was granted an equal chance, our disparities would almost completely vanish. Dementia is a neurodegenerative disease which effects the normal functioning of patients and it starts effecting heart and lungs of patients leading to death of patient. Dementia is divided into following types of Neurodegenerative and nonneurodegenerative [18].Types of dementia is indicated in When this disease came into limelight, mostly specialist doctors examine the symptoms or cases of dementia cure by looking into below listed methodology:a) History of a person includes interview of a person with a neurologist b) Mental state of person keeping focus on neurological test c) Blood sample tests d) Scan of a Brain was done to diagnose. All these steps remain the baseline for diagnosing the patient to diagnose dementia. As dementia has been divided into two types, mostly which occurs after cognitive impairment is Alzheimer's disease. This disease has become very common with elderly people(which are above 65) which is called later onset of Alzheimer's disease(Load).In the recent years this disease is growing like leaps and bounds in the whole world [25].

REALATED WORK Year
Proposed Solution Reference 2016 gave a clear picture of contribution or current trends in usage of machine learning algorithms in predicting the transformation of mild impairment to Alzheimer is depicted. In it various databases like Pubmed ,Scopus and Web of Science were explored and then relevant data was extracted to reach the Final goal for presenting the inclination of machine learning algorithms.
[19] 2016 Raproposed a system which deals with diagnosis of Alzheimer's disease. To diagnose the disease three parts of brain is considered frontal, Sagittal and Axial. Dataset of 19-20 taken in this paper was from OASIS (Open Access Series of Imaging Studies).It reached higher accuracy rate in diagnosing the disease and for future prospects longitudinal monitoring application needs to be added to it. [9]

2017
A proposed the concept of abnormal behaviour factors of a human like forgetting and repeating activities, Dehydration and disruption in sleep etc. Methods like RNN was used for activity detection in comparison to other models which showed that RNN out powered all other models in detection of abnormal behaviour. [9] 2017 Isl proposed a method in which various filters were applied on data using Convolutional network and then reached at an accuracy level of 73.75% in detection of Alzheimer's disease.In this paper Brain MRI were used for detection and for diagnosing and evaluating of data less than an hour was taken by the proposed system [4] 2018 P proposed a technique which analysed MRI dataset that reduced grey matter volume shrinks the brain and ventricle size discriminates between person with Alzheimer's disease and Normal person.
[5] 2018 D analysed the paper and has divided the paper into three areas i)diagnosis-Using statistical techniques biomarkers of the disease was taken out ii)Survival analysis-Using analytical techniques survival rate after onset of disease is analysed. Iii)Disease Progression-using estimation techniques transition state of patient is estimated. 2019 deals in extraction of feature using Segmentation based fractional texture analysis(SFTA).In SFTA data was extracted from 50 demented and 50 nondemented subject MRI by breaking of image into binary image. On the basis of feature extraction classification for diagnosis is done using feed forward neural network. Neural network gave accuracy of 97.5%. [4]

TRANSFER LEARNING
In this phase, CNN model-based feature extractor is designed as shown in Figure 2 using RESnet architecture and transfer learning method [4,5]. The parameters of the CNN model (RESnet50) pertain to a natural image set known as ImageNet. It is utilized to extract the low-level features from the generated ROI of mammogram images. The structure of the CNN model in transfer learning consisted of four convolution layers (conv) of RESnet architecture with a ReLU mapping activation function and a simple fully connected layer (FC) as shown in

CONVOLUTION WITH ATTENTION LAYER
In this phase, the features of CNN and attention models are combined. Both models are worked parallel for extracting the features from the input mammogram image. CNN integrated CNN Extracted Features which were fitted together with a thick sheet. attention learning for better function collection. In order to conform to various document sizes, the mechanism automatically selects features of different scales at each location in the text. As the focus function tests weight distribution, it estimates an array. Xi , f(Xi , Xi+1) features from the second layer and f(Xi , Xi+1,· · · , Xi +L−1) from the L-th layer. These feature values indicate the responses of multi-scale ngrams, i.e., unigram Xi , bigram Xi Xi+1. and L-gram Xi Xi+1· · · Xi +L−1. In the focus mechanism, the filter ensemble and reweight scale are used in unison. a scale-descriptor filter is generated to feature features at each scale Xi l at position i. Scale reweight computes SoftMax distribution of attention weights using the descriptors as data, and outputs weighted attribute weights for reweighing.

CNN MODEL
In this phase, the CNN model is designed to extract the relevant features from the M feature matrix. The detail about the CNN model is described in Fig.4. It has four convolution layer along with two max-pooling layers and one fully connected layer. The convolution layer contains many neurons. These neurons are connected with each other's and share biases and weights. This layer converts the matrix features into the feature map by utilizing convolution operations [26]. Although, the input feature matrix is mapped with kernel sets. These kernels produce the new feature map and this procedure is known as convolution. The value of feature at location (s, d) in the uth feature map of kth layer, the value of is computed by using equation 15.
( , ) = ( , ) + (4) The max pooling is used to reduce the computed feature maps dimension. ReLU activation function is used in each layer expect the last output layer, for that sigmoid function is used. After the 4-convolution layer and 2 max pooling operation, the output of final convolution layer is propagated into the fully connected layer. Let the output of final convolution layer is and it is calculated by using equation 16. = ( ) = (∑ * ( −1 )) (5) Where, u is the kernel numbers that are utilized in final convolution layer, represents the kernel weight, ( −1 ) is the value of activation function of ( − 1) convolution layer. Finally, the fully connected layer contains the feature vectors with labels. These feature vectors are fed into ensemble learning model for breast mass classification.

ENSEMBLE LEARNING MODEL FOR CLASSIFICATION
In this phase, the ensemble learning-based classification model is proposed by combining extreme gradient boosting with Xg-boost technique. In the proposed system, the Xg-boost is used to generate the different regression trees from the feature vectors with labels along with different threshold values. It is not capable of taking the final prediction decision regarding the different tree combinations. Hence, Whereas, the C technique is used to calculate the threshold values for model selection in the testing phase. It has an effective regularization function, in turn, less value of loss function is generated by using the following objective functions (10)

Fig3: Comparison of Performance metrics On Proposed approach and Existing Deep learning Approaches
In above fig3 comparison of proposed and other deep learning models like CNN, CNN-attention, CNN-transfer Learning by different parameters like Accuracy ,Precision ,recall and f-score. By this experiment following observation find  In fig3 proposed approach show significantly improve all parameters like accuracy, precision and recall.  Accuracy improve 5-6%, Precision improve 2-3% and recall improve 6-7% in proposed approach.  In proposed approach improved parameters come because of optimize tune parameters by transfer learning and attention of efficient features using attention layers.  In proposed approach improve feature mapping learn by gradient base xg boost classifier which improve the results by ensemble and normalization of error. In fig4 and fig5 comparison of Precision and Recall performance class wise performance. In this comparison show that proposed approach detection efficiently and reduce type 2 error by its precision and recall

CONCLUSION
The article uses a deep learning model to investigate stages of Alzheimer's disease using multi-class classification. We suggested a CNN-to-transfer mapping of attention. We describe our proposed approach with ADNI detail studies, where the MRI has four distinct categories: No dementia (ND), mild dementia (MD), moderate dementia (MMD), and very severe dementia (MSD). We conduct experiments to assess model regularization and overfitting in different classes to get a better idea of how they affect the overall performance of our application. is the approach proposed in the gradient Boost method that leverages hyperparameter variation and parameter optimization for pre-processing the Boosting framework allows poor classifier models to learn sequentially. classifier is created in the manner of performing residual classification using gradient descent. Dementia The mortality rate is significantly lower for elderly people than it is for other age groups in particular, especially those over the age of seventy. Precision increase 2-3% and recall improving recall and recall efficiency will result in a 5-6% improvement.