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International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 09 Issue: 05 | May 2022 www.irjet.net p-ISSN: 2395-0072
© 2022, IRJET | Impact Factor value: 7.529 | ISO 9001:2008 Certified Journal | Page 404
Prediction of Cognitive Imperiment using Deep Learning
Siddharth Tiwari 1, Ankur Kumar 2, Rohit Gupta 3 Rishabh Attari4
1Department of Computer Science & Engineering (1901320109016)
2Department of Computer Science & Engineering (1901320109003)
3Department of Computer Science & Engineering (18132101128)
4Department of Computer Science & Engineering (1813210123)
Assistant Professor DR Santosh Srivastava, Dept. of Computer Science & Engineering, GNIOT college, Utter Pradesh,
India
---------------------------------------------------------------------***---------------------------------------------------------------------
Abstract - mental impermeant implies when somebody is
experiencing difficulty with things like memory or focusing.
They could experience difficulty talking or understanding
and they could experience issues perceiving individuals,
spots or things, and could observe new spots or
circumstances overpowering.Theobjectiveofthisstudyisto
give another PC vision-based procedure to recognize it in an
effective manner. The cerebrum imaging information of210
AD patients ,198 CN and 196 MC sound controls was
gathered utilizing information increase strategy. Then, at
that point, convolutional brain organization (CNN) was
utilized, CNN is the best apparatus in profound learning.
Three enactment capacities (AFs): sigmoid, corrected direct
unit (REL), and defective REL. The three pooling-capacities
were additionally tried: normal pooling, max pooling, and
stochastic pooling. The mathematical trials showed that
cracked REL and max pooling gave the best outcome with
regards to execution. It accomplished a responsiveness of
81.96%, an explicitness of 71.35%, and a precision of
89.72%, individually. Likewise, the proposed approach was
contrasted and eight bests in class draws near. The strategy
expanded the arrangement precision by around 5%
contrasted with cutting edge techniques
Key Words: (CNN) Cognitive Neural Network1
1. INTRODUCTION
Alzheimer's infection (AD) is a dynamic mind illness. The
objective of this study is to give another PC vision-based
procedure to identify it in a proficient manner. The mind
imaging information of 98 AD patients and 98 solid controls
was gathered utilizing information increase strategy. Then,
at that point, convolutional brain organization (CNN) was
utilized, CNN is the best device in profound learning. An 8-
layer CNN was made with ideal construction got by
encounters. Three initiation capacities (AFs): sigmoid,
amended straight unit (ReLU), and flawed ReLU. The three
pooling-capacities were likewise tried: normal pooling, max
pooling, and stochastic pooling. The mathematical tests
showed that flawed ReLU and max pooling gave the best
outcome with regards to execution. It accomplished an
awareness of 97.96%, a particularity of 97.35%, and a
precision of 97.65%, individually. Also, the proposed
approach was contrasted and eight cutting edge drawsnear.
The strategy expanded the order exactness by around 5%
contrasted with cutting edge techniques.
1.1 Finding of Alzheimer's infection
The finding of Alzheimer's infection (AD) can be worked on
by the utilization of biomarkers. Primary MRI, which gives
biomarkers of neuronal misfortune,isa fundamental pieceof
the clinical evaluation of patients with thought AD (Albert et
al., 2011; Dubois et al., 2014. A few examinations have
shown that decay gauges in typically weak cerebrum areas,
especially the hippocampus and entorhinal cortex, reflect
illness stage and are prescient of movement ofgentlemental
hindrance (MCI) to AD. The clinical utility of underlyingMRI
in separating AD from different infections, for example,
vascular or non-AD dementia, has been likewise settled. Be
that as it may, the worth of underlying MRI will be expanded
by normalization of procurement and investigation
strategies, and by advancement of hearty calculations for
mechanized evaluation. These are expected to accomplish a
definitive objective of individual patient conclusion with a
solitary cross-sectional underlyingMRIfilterandfor primary
MRI to be most certainly qualified by administrative offices
as a biomarker for improvement of pre-dementia AD
preliminaries.
1.2 Past work
Past work in PC supported grouping of AD and MCI patients
has utilized a few AI techniques applied to primary MRI.The
most well-known among these strategies is Support Vector
Machine (SVM). SVM extricates high-layered, educational
highlights from MRI to fabricate prescient ordermodelsthat
work with the robotization of clinical finding. In any case,
highlight definition and extraction commonly depend on
manual/self-loader framing of mind structures, which is
relentless and inclined to between and intra-ratter
inconstancy, or complex picture pre-handling, which is
tedious and computationallyrequesting.Anelectivegroupof
AI techniques, known as profound learning calculations, are
accomplishing ideal outcomes in numerous spaces, for
example, discourse acknowledgment errands, PC vision and
regular language understanding and, all the more as of late,
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 09 Issue: 05 | May 2022 www.irjet.net p-ISSN: 2395-0072
© 2022, IRJET | Impact Factor value: 7.529 | ISO 9001:2008 Certified Journal | Page 405
clinical examination.Deepgainingcalculationscontrastfrom
traditional AI strategies by the way that they require
practically zero picture pre-handling and can naturally
surmise an ideal portrayal of the information fromthecrude
pictures without expecting earlier component choice,
bringing about a more goal and less inclination inclined
process Therefore, profound learning calculations are more
qualified for recognizing inconspicuous and diffuse physical
irregularities.
As of late, profound learning has been effectively applied to
the Alzheimer's Disease Neuroimaging Initiative (ADNI)
dataset to distinguish AD patients from sound controls
(Table 1) (for a survey see ). Just a single report so far has
applied profound learning calculations, without deduced
include choice (thinking about gray matter [GM] volumes as
contribution), to the forecast of AD improvement in
somewhere around year and a half in people with MCI
utilizing ADNI primary MRI check.
2. Data Set
Here we have taken MRI reports from different web source
and few radiologists’ centre. Data set are divided into Two
categories : Test Date And Train Data which is farther
classified as Alzimer Dementia,congenetivel Normal and
mild congetively imperilment
Using this dataset we can help the designed classifier-based
ensemble model to build a Recommender system based on
dataset given . Which differentiate between the stages of
illness
3. Related Work
A recommender system works keen and identifies report
and predicts the stages of Dementia, as there is lack of
treatment in the world as it’s hard toknow whichstageisthe
patient is, user. This is machine predict the given case .to
come to this conclusion we have used Convolutional neural
network (CNN) model
Fig -1: Flowchart of cognitive impermeant works
When we train our machine using predictionlogictofind the
accuracy of the machine, we get loose some date in the form
of Training loss and validation loss .
Training loss occurs when there is some loss while training
the machine the word loss means when the machine is not
able to give the accurate result in the in the form of false
negative ,and true negative which leads in the loss to date
while training validation and training error drop.
Fig 2:Graph showing the result loss and epoch after
training the machine
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 09 Issue: 05 | May 2022 www.irjet.net p-ISSN: 2395-0072
© 2022, IRJET | Impact Factor value: 7.529 | ISO 9001:2008 Certified Journal | Page 406
Fig 3:Sample of data set
4. Proposed work
Proposed a CNN model is designed to build prediction of
cognitive impertinent based on dataset provided. Here in
this model, we machine retrieve the data in the form of MRI
reports in the second step the image processing is don’t to
check the images by image resizing and image denoising
after that CNN model is used to generate themodel onwhich
the machine will perform the prediction logic andtrainitself
in the end the validation is done l.
Fig 4 :System architecture for exiting works
5. System design
The system design is containing the all three types of data
set which is used to predict the conditionofthepatentwhich
the CNN model in the below diagram we have taken the bird
image and the output will carry out by prediction which
animal it is ,it’s just an example how our machine works in
real time ,we give it a data set which is farther checked by
the machine by edges and circles if it matches it will give the
output .
Fig 5: Working of CNN Model
5.1 Techniques Used
CNN Model
a convolutional neural network (CNN/ConvNet) is a class of
deep neural networks, most commonly applied to analyse
visual imagery. Now when we think of a neural network, we
think about matrix multiplications but that is not the case
with ConvNet. It uses a special technique calledConvolution.
Now in mathematics convolution is a mathematical
operation on two functions that produces a third function
that expresses how the shape of oneismodifiedbytheother.
5.2 The overall architecture to predict the cognitive
impermeant
1. Considering the dataset and splitting items of data list
with sentimental based and ratings based.
2. Including the above phase the disease prediction is done
in three factors.
They are:-
a)mild dementia
b)non dementia
c)very mild dementia.
With these the prediction is done by consideringthepositive
and negative values.
6. Conclusion
In this paper, this work presents a prediction system based
on CNN model .Initially CNN is used to build the model and
achieved 88% accuracy overall.Next we proposed to apply
Decision Tree, Logistic Regression, individual performance
of the classifiers.Relevant Feature will be extracted and
minimal features will be selected to reduce the system
complexity.We have proposed to use a classifier-based
ensemble learning technique to try increasing the accuracy
better than the existing works.
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 09 Issue: 05 | May 2022 www.irjet.net p-ISSN: 2395-0072
© 2022, IRJET | Impact Factor value: 7.529 | ISO 9001:2008 Certified Journal | Page 407
Fig 6: The trained result with 88% accuracy
Fig 7: The Final Output
ACKNOWLEDGEMENT
I’d like to express my deepest thanks to DR Santosh Kumar
Srivastava , without you this project would not have been
possible ,it was really good working under your supervision
thank you sir for guiding us with your knowledge
REFERENCES
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Tchala Vignon Zomahoun, Jord Croteau,Consortium for the
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[8] Bin Ding ,Huimin Qian ,Jun Zhou,”Activation Functions
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[9] ABOL BASHER , BYEONG C. KIM, KUN HO LEE, AND HO
YUB JUNG, ” Volumetric Feature-Based Alzheimer’s Disease
Diagnosis From sMRI Data Using a Convolutional Neural
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 09 Issue: 05 | May 2022 www.irjet.net p-ISSN: 2395-0072
© 2022, IRJET | Impact Factor value: 7.529 | ISO 9001:2008 Certified Journal | Page 408
Network and a Deep Neural Network.”
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[10] TONG, QINQUAN GAO, RICARDO GUERRERO,
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[14] Ahmad Waleed Salehi, Preety Baglat, Brij Bhushan
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[15] Firouzeh Razavi, Mohammad Jafar Tarokh and
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[16] Wei Li. , Yifei Zhao, Xi Chen, Yang Xiao, Yuanyuan Qin,”
Detecting Alzheimer’s Disease on Small Dataset: A
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and Health Informatics
[17] HIROKI TANAKA , HIROYOSHI ADACHI , NORIMICHI
UKITA, MANABU IKEDA, HIROAKI KAZUI , TAKASHI KUDO ,
AND SATOSHI NAKAMURA,” Detecting Dementia Through
Interactive Computer Avatars”,
10.1109/JTEHM.2017.2752152,IEEE JOURNAL
[18] SURIYA MURUGAN, CHANDRAN VENKATESAN, M. G.
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MANOHARAN,” DEMNET: A Deep Learning Model for Early
Diagnosis of Alzheimer Diseases and Dementia From MR
Images”,10.1109/ACCESS.202[1]3090474,VOLUME9,2021
BIOGRAPHIES
Siddharth Tiwari
8thSemenster student
Computer Science and Engeinring
Ankur Kumar
8thSemenster student
Computer ScienceandEngineering
Rohit Gupta
8thSemenster student
Computer Science and Engineering
Rishabh Attari
8thSemenster student
Computer Science and Engineering

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Prediction of Cognitive Imperiment using Deep Learning

  • 1. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 09 Issue: 05 | May 2022 www.irjet.net p-ISSN: 2395-0072 © 2022, IRJET | Impact Factor value: 7.529 | ISO 9001:2008 Certified Journal | Page 404 Prediction of Cognitive Imperiment using Deep Learning Siddharth Tiwari 1, Ankur Kumar 2, Rohit Gupta 3 Rishabh Attari4 1Department of Computer Science & Engineering (1901320109016) 2Department of Computer Science & Engineering (1901320109003) 3Department of Computer Science & Engineering (18132101128) 4Department of Computer Science & Engineering (1813210123) Assistant Professor DR Santosh Srivastava, Dept. of Computer Science & Engineering, GNIOT college, Utter Pradesh, India ---------------------------------------------------------------------***--------------------------------------------------------------------- Abstract - mental impermeant implies when somebody is experiencing difficulty with things like memory or focusing. They could experience difficulty talking or understanding and they could experience issues perceiving individuals, spots or things, and could observe new spots or circumstances overpowering.Theobjectiveofthisstudyisto give another PC vision-based procedure to recognize it in an effective manner. The cerebrum imaging information of210 AD patients ,198 CN and 196 MC sound controls was gathered utilizing information increase strategy. Then, at that point, convolutional brain organization (CNN) was utilized, CNN is the best apparatus in profound learning. Three enactment capacities (AFs): sigmoid, corrected direct unit (REL), and defective REL. The three pooling-capacities were additionally tried: normal pooling, max pooling, and stochastic pooling. The mathematical trials showed that cracked REL and max pooling gave the best outcome with regards to execution. It accomplished a responsiveness of 81.96%, an explicitness of 71.35%, and a precision of 89.72%, individually. Likewise, the proposed approach was contrasted and eight bests in class draws near. The strategy expanded the arrangement precision by around 5% contrasted with cutting edge techniques Key Words: (CNN) Cognitive Neural Network1 1. INTRODUCTION Alzheimer's infection (AD) is a dynamic mind illness. The objective of this study is to give another PC vision-based procedure to identify it in a proficient manner. The mind imaging information of 98 AD patients and 98 solid controls was gathered utilizing information increase strategy. Then, at that point, convolutional brain organization (CNN) was utilized, CNN is the best device in profound learning. An 8- layer CNN was made with ideal construction got by encounters. Three initiation capacities (AFs): sigmoid, amended straight unit (ReLU), and flawed ReLU. The three pooling-capacities were likewise tried: normal pooling, max pooling, and stochastic pooling. The mathematical tests showed that flawed ReLU and max pooling gave the best outcome with regards to execution. It accomplished an awareness of 97.96%, a particularity of 97.35%, and a precision of 97.65%, individually. Also, the proposed approach was contrasted and eight cutting edge drawsnear. The strategy expanded the order exactness by around 5% contrasted with cutting edge techniques. 1.1 Finding of Alzheimer's infection The finding of Alzheimer's infection (AD) can be worked on by the utilization of biomarkers. Primary MRI, which gives biomarkers of neuronal misfortune,isa fundamental pieceof the clinical evaluation of patients with thought AD (Albert et al., 2011; Dubois et al., 2014. A few examinations have shown that decay gauges in typically weak cerebrum areas, especially the hippocampus and entorhinal cortex, reflect illness stage and are prescient of movement ofgentlemental hindrance (MCI) to AD. The clinical utility of underlyingMRI in separating AD from different infections, for example, vascular or non-AD dementia, has been likewise settled. Be that as it may, the worth of underlying MRI will be expanded by normalization of procurement and investigation strategies, and by advancement of hearty calculations for mechanized evaluation. These are expected to accomplish a definitive objective of individual patient conclusion with a solitary cross-sectional underlyingMRIfilterandfor primary MRI to be most certainly qualified by administrative offices as a biomarker for improvement of pre-dementia AD preliminaries. 1.2 Past work Past work in PC supported grouping of AD and MCI patients has utilized a few AI techniques applied to primary MRI.The most well-known among these strategies is Support Vector Machine (SVM). SVM extricates high-layered, educational highlights from MRI to fabricate prescient ordermodelsthat work with the robotization of clinical finding. In any case, highlight definition and extraction commonly depend on manual/self-loader framing of mind structures, which is relentless and inclined to between and intra-ratter inconstancy, or complex picture pre-handling, which is tedious and computationallyrequesting.Anelectivegroupof AI techniques, known as profound learning calculations, are accomplishing ideal outcomes in numerous spaces, for example, discourse acknowledgment errands, PC vision and regular language understanding and, all the more as of late,
  • 2. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 09 Issue: 05 | May 2022 www.irjet.net p-ISSN: 2395-0072 © 2022, IRJET | Impact Factor value: 7.529 | ISO 9001:2008 Certified Journal | Page 405 clinical examination.Deepgainingcalculationscontrastfrom traditional AI strategies by the way that they require practically zero picture pre-handling and can naturally surmise an ideal portrayal of the information fromthecrude pictures without expecting earlier component choice, bringing about a more goal and less inclination inclined process Therefore, profound learning calculations are more qualified for recognizing inconspicuous and diffuse physical irregularities. As of late, profound learning has been effectively applied to the Alzheimer's Disease Neuroimaging Initiative (ADNI) dataset to distinguish AD patients from sound controls (Table 1) (for a survey see ). Just a single report so far has applied profound learning calculations, without deduced include choice (thinking about gray matter [GM] volumes as contribution), to the forecast of AD improvement in somewhere around year and a half in people with MCI utilizing ADNI primary MRI check. 2. Data Set Here we have taken MRI reports from different web source and few radiologists’ centre. Data set are divided into Two categories : Test Date And Train Data which is farther classified as Alzimer Dementia,congenetivel Normal and mild congetively imperilment Using this dataset we can help the designed classifier-based ensemble model to build a Recommender system based on dataset given . Which differentiate between the stages of illness 3. Related Work A recommender system works keen and identifies report and predicts the stages of Dementia, as there is lack of treatment in the world as it’s hard toknow whichstageisthe patient is, user. This is machine predict the given case .to come to this conclusion we have used Convolutional neural network (CNN) model Fig -1: Flowchart of cognitive impermeant works When we train our machine using predictionlogictofind the accuracy of the machine, we get loose some date in the form of Training loss and validation loss . Training loss occurs when there is some loss while training the machine the word loss means when the machine is not able to give the accurate result in the in the form of false negative ,and true negative which leads in the loss to date while training validation and training error drop. Fig 2:Graph showing the result loss and epoch after training the machine
  • 3. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 09 Issue: 05 | May 2022 www.irjet.net p-ISSN: 2395-0072 © 2022, IRJET | Impact Factor value: 7.529 | ISO 9001:2008 Certified Journal | Page 406 Fig 3:Sample of data set 4. Proposed work Proposed a CNN model is designed to build prediction of cognitive impertinent based on dataset provided. Here in this model, we machine retrieve the data in the form of MRI reports in the second step the image processing is don’t to check the images by image resizing and image denoising after that CNN model is used to generate themodel onwhich the machine will perform the prediction logic andtrainitself in the end the validation is done l. Fig 4 :System architecture for exiting works 5. System design The system design is containing the all three types of data set which is used to predict the conditionofthepatentwhich the CNN model in the below diagram we have taken the bird image and the output will carry out by prediction which animal it is ,it’s just an example how our machine works in real time ,we give it a data set which is farther checked by the machine by edges and circles if it matches it will give the output . Fig 5: Working of CNN Model 5.1 Techniques Used CNN Model a convolutional neural network (CNN/ConvNet) is a class of deep neural networks, most commonly applied to analyse visual imagery. Now when we think of a neural network, we think about matrix multiplications but that is not the case with ConvNet. It uses a special technique calledConvolution. Now in mathematics convolution is a mathematical operation on two functions that produces a third function that expresses how the shape of oneismodifiedbytheother. 5.2 The overall architecture to predict the cognitive impermeant 1. Considering the dataset and splitting items of data list with sentimental based and ratings based. 2. Including the above phase the disease prediction is done in three factors. They are:- a)mild dementia b)non dementia c)very mild dementia. With these the prediction is done by consideringthepositive and negative values. 6. Conclusion In this paper, this work presents a prediction system based on CNN model .Initially CNN is used to build the model and achieved 88% accuracy overall.Next we proposed to apply Decision Tree, Logistic Regression, individual performance of the classifiers.Relevant Feature will be extracted and minimal features will be selected to reduce the system complexity.We have proposed to use a classifier-based ensemble learning technique to try increasing the accuracy better than the existing works.
  • 4. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 09 Issue: 05 | May 2022 www.irjet.net p-ISSN: 2395-0072 © 2022, IRJET | Impact Factor value: 7.529 | ISO 9001:2008 Certified Journal | Page 407 Fig 6: The trained result with 88% accuracy Fig 7: The Final Output ACKNOWLEDGEMENT I’d like to express my deepest thanks to DR Santosh Kumar Srivastava , without you this project would not have been possible ,it was really good working under your supervision thank you sir for guiding us with your knowledge REFERENCES [1] Sylvie Belleville ,Céline Fouquet, Carol Hudon, Hervé Tchala Vignon Zomahoun, Jord Croteau,Consortium for the Early Identification of Alzheimer’s disease- Quebe,”Neuropsychological Measures that Predict Progression from Mild Cognitive Impairment to Alzheimer's type dementia in Older Adults: a Systematic Review and Meta-Analysis”, Neuropsychol Rev (2017), DOI 10.1007/s11065-017 9361-5 [2] F.J. Martinez-Murcia, A. Ortiz, J.M. Gorriz, J. Ramirez and D. Castillo-Barnes,” Studying the Manifold Structure of Alzheimer’s Disease: A Deep Learning Approach Using Convolutional Autoencoders” 10.1109/JBHI.2019.2914970, IEEE Journal of Biomedical and Health Informatics [3] SUHAD AL-SHOUKRY ,TAHA H.RASSEM,ANDNASRIN M. MAKBOL ,” Alzheimer’s Diseases Detection by Using Deep Learning Algorithms:A Mini- Review”,10.1109/ACCESS.2020.2989396, VOLUME 8, 2020 [4] XIN HONG, RONGJIE LIN, CHENHUI YANG, NIANYIN ZENG, CHUNTING CAI, JIN GOU,ANDJANEYANG,”Predicting Alzheimer’s Disease Using LSTM” 10.1109/ACCESS.2019.2919385, VOLUME 7, 2019 [5] PEI YIN AND LIANG ZHANG ,” Image Recommendation Algorithm Based on Deep Learning”, 10.1109/ACCESS.2020.3007353, VOLUME 8, 2020 Shui-Hua Wang, Preetha Phillips , Yuxiu Sui ,Bin Liu, Ming Yang , Hong Cheng,” Classification of Alzheimer’s Disease Based on Eight-Layer Convolutional Neural Network with Leaky Rectified Linear Unit and Max Pooling” Journal of Medical Systems (2018) Clinical 21 (2019) 101645 [6] Silvia Basaia , Federica Agosta , Luca Wagner,Elisa Canu, Giuseppe Magnani , Roberto Santangelo , Massimo Filippi,” Automated classification of Alzheimer's disease and mild cognitive impairment using a single MRI and deep neural networks”, [7] Yadav and Jadhav J Big Data (2019 [8] Bin Ding ,Huimin Qian ,Jun Zhou,”Activation Functions and Their Characteristics in Deep Neural Network” 78-1- 5386-1243-9/18/$3[1]00 c 2018 IEEE Sitara Afzal , Muazzam Maqsood , Faria Nazir , Umair Khan, Farhan Aadil, Khalid Mahmood Awan, Irfan Mehmood, Oh- Young Song ,” A Data Augmentation based Framework to Handle Class Imbalance Problem for Alzheimer’s Stage Detection”, 10.1109/ACCESS.2019.2932786, IEEE Access [9] ABOL BASHER , BYEONG C. KIM, KUN HO LEE, AND HO YUB JUNG, ” Volumetric Feature-Based Alzheimer’s Disease Diagnosis From sMRI Data Using a Convolutional Neural
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