Alzheimer mri dataset download. 53% for 4-class and 99.
Alzheimer mri dataset download key"]!kaggle datasets download -d tourist55/alzheimers-dataset-4-class-of-images!unzip Download scientific diagram | Alzheimer MRI Preprocessed Dataset from publication: Efficient Alzeihmer’s disease detection using Deep learning Technique | The human brain serves as the primary The dataset used is the OASIS MRI dataset, which consists of 80,000 brain MRI images. 0). The dataset consists of brain MRI images labeled into four categories: '0': Mild_Demented OpenNEURO (free and open platform for sharing MRI, MEG, EEG, iEEG, and ECoG data) (formerly OpenfMRI, now deprecated) Wikipedia (list of neuroscience databases) Cam-CAN (Cambridge Centre for Aging and Neuroscience large-scale data set). Jul 7, 2022 · The EPAD imaging dataset includes core (3D T1w, 3D FLAIR) and advanced (ASL, diffusion MRI, and resting-state fMRI) MRI sequences. Alzheimer's Disease and Healthy Aging Data Download Metadata. Therefore, the early detection of AD is crucial for the development of effective treatments and interventions, as the disease is more responsive to treatment in its early stages. Learn more This project focused on Alzheimer's disease through three main objectives. Mar 7, 2024 · This open-science dataset is well suited not only for research relating to susceptibility to Alzheimer's disease but also for more general questions on brain aging or can be used as part of meta Implementation of an Alzheimer's Disease detection system using Deep Learning on MRI images from a Kaggle Dataset. Available at CBU. 1 Dataset Collection. This project is designed to run on Google Colab, utilizing Google Drive for dataset storage due to the large size of the dataset. It utilizes a dataset of 6400 MRI images from Kaggle, categorized into four classes. MRI - Alzheimer dataset by MRI Alzheimer. AD Dataset 2 292 This repository presents "MRI-Based Classification of Alzheimer's Stages Using 3D, 2D, and Transfer Learning CNN Models. MRI images are often 3D, and thus result in large feature space, making feature selection an essential component. 0 stars I applied PCA to masked transverse-orientation MRI images from the OASIS-2 dataset in order to build a neural network that could discriminate healthy brains from brains of patients diagnosed with Alzheimer's disease with 94. OASIS-4 contains MR, clinical, cognitive, and biomarker data for individuals that presented with memory complaints. The strategy is evaluated by exploitation of an ADNI dataset. The dataset consists of brain MRI images labeled into four categories: Jun 27, 2020 · The main goal is to build an end-to-end model to predict the stage of Alzheimer’s from MRI images. jpg format, sourced from . mri, fmri, dti, pet Australian Imaging Biomarkers & Lifestyle Flagship Study of Ageing (AIBL) N = 292, Controls, Alzheimer's Disease (AD), Mild Cognitive Impairment (MCI) Download Data. However, instructions for obtaining the dataset and preprocessing steps are provided in the data Mar 24, 2024 · To rigorously evaluate the performance of the proposed 3D HCCT architecture for AD classification from 3D MRI scans, we leverage the widely recognized Alzheimer’s Disease Neuroimaging Initiative (ADNI) dataset. Drop an image or. To make the dataset Kaggle is the world’s largest data science community with powerful tools and resources to help you achieve your data science goals. Download full-text. Follow these steps to set up and run the project: Download the Dataset: Download the dataset from Kaggle: ImagesOASIS and upload it to your Google Drive. This is done by using a deep learning model to classify the scans. Model Achievements: Achieved 99% accuracy with optimized CNN architectures. Download scientific diagram | Sample images from OASIS dataset. The dataset which contains of four directories and are classified in accordance with that. The dataset consists of MRI images of the axial view of the brain. The dataset consists of brain MRI images labeled into four categories: '0': Mild_Demented '1': Moderate_Demented '2': Non_Demented Jan 3, 2023 · Alzheimer’s disease represents a neurological condition characterized by steady cognitive decline and eventual memory loss due to the death of brain cells. (b) HC. Aug 29, 2023 · The current dataset is about Alzheimer's disease (AD). Download full Aug 28, 2024 · Early diagnosis methods of Alzheimer's disease seem to be necessary due to the high costs of care and treatment, the indeterminacy of existing treatment methods, and the worrying future of the patient. Since its launch more than a decade ago, the landmark public-private partnership has made major contributions to AD research, enabling the sharing of data Jan 1, 2022 · The multisite Alzheimer Disease Neuroimaging Initiative (ADNI, (Mueller et al. The proposed FiboNeXt model was tested on two open-access MRI image datasets comprising both augmented and original versions. , 2008) where QC and preprocessing were done centrally and also provided extracted MRI metrics to investigators. 53% for 4-class and 99. Multimodal, multi-subject data set (EMEG and (f)MRI, famous/unfamiliar/scrambled faces). , 2005)) has focused on MRI standardization across sites, mainly during the preparation phase (Jack et al. Feb 15, 2025 · As the source dataset in scenario (A), we utilized 1. Here, we give an overview of the semi-automatic multimodal and multisite pipeline that we developed to curate, preprocess, quality control (QC), and compute image-derived phenotypes (IDPs) from the EPAD MRI dataset. This research on Alzheimer’s disease used data from the Open Access Series of Imaging Studies (OASIS) [20, 21]. We refer to this source dataset as the “1. Feb 11, 2024 · Rotation and Scaling (Scipy Library) are applied to an original dataset for data enhancement. deep-learning python3 mri-images vgg19 kaggle-dataset inception-v3 jupiter-notebook alzheimer-disease-prediction google-colab-notebook Imaging and biomarker data are available on a subset of UDS participants. This study was conducted in order to diagnose Alzheimer’s disease from MRI images using artificial intelligence. - diegoperac/alzheimers_disease Feb 21, 2025 · A dataset for testing comprised 224 samples of Alzheimer’s Disease (AD), and 288 samples of Cognitively Normal (CN), a total of 512 MRI images, considering for Binary Classifier (AD and CN). Huge thanks to Tian Xia for sharing initial code. Mar 10, 2011 · The dataset used is the OASIS MRI dataset recall, and F1 score for classifying mri images to 4 Alzheimer's disease stages Resources. Neuroimaging records have not been harmonized to Mar 7, 2025 · Using axial view T2-weighted MRI scans from the ADNI dataset, the input consists of images resized to 255 × 255 pixels from the axial view. g. Dataset The dataset used in this project consists of longitudinal MRI scans of individuals with and without Alzheimer's Disease. @misc{ detecting-alzheimer-in-mri-scans_dataset, title = { detecting alzheimer in Kaggle is the world’s largest data science community with powerful tools and resources to help you achieve your data science goals. Classes: Non-Demented, Very Mild Demented, Mild Demented, Demented. OpenNeuro is a free and open platform for sharing neuroimaging data. Alzheimer's MRI scan-based classification provides valuable clinical insights and serves as a complementary approach to expression profile-based studies, offering a holistic understanding of disease progression. The dataset predominantly contains structural MRI scans, which typically consist of T1-weighted images. Secondly, a Custom Resnet-18 was trained to classify these images It focuses on leveraging built-from-scratch machine learning models to classify Alzheimer's disease progression using the OASIS Alzheimer’s Detection Dataset. This dataset addresses the limitations of existing Alzheimer’s MRI datasets, which often suffer from redundancy and unclear data sources. It uses 3D convolutional neural networks (CNN) to classify the scans. Kaggle uses cookies from Google to deliver and enhance the quality of its services and to analyze traffic. To download the imaging data, click on Download and choose Image collections. 3)Differentiating Mild Demented (early signs) from Moderate Demented (advanced symptoms), Non-Demented (baseline), and Very Mild Demented (challenging early-stage diagnosis). The augmented versions were utilized for training, while the original dataset was used for testing. The critical need for early detection to enable timely intervention and personalized care is emphasized by the current lack of effective treatments. , fully segmented neurons and their intracellular constituents, including classic hallmarks of AD progression), and tools to That is why it is decided to make the model accept images with size 200 × 190 px as it is the dominant size in the dataset. Here, … The Alzheimer’s Disease Neuroimaging Initiative (ADNI) is a longitudinal multicenter study designed to develop clinical, imaging, genetic, and biochemical biomarkers for the early detection and tracking of Alzheimer’s disease (AD). Firstly, a dataset of axial 2D slices was created from 3D T1-weighted MRI brain images, integrating clinical, genetic, and biological sample data. OASIS-3 is a longitudinal multimodal neuroimaging, clinical, cognitive, and biomarker dataset for normal aging and Alzheimer’s Disease. Since its launch more than a decade ago, the landmark public-private partnership has made major contributions to AD research, enabling the sharing of data Jul 4, 2023 · 阿尔茨海默病MRI分类数据集是一个专为研究和医疗应用设计的资源,专注于通过MRI扫描对阿尔茨海默病进行分类。数据集包含脑部MRI图像,并根据病情严重程度分为四个类别:轻度痴呆、中度痴呆、非痴呆和非常轻度痴呆。数据集分为训练集和测试集,训练集包含5120个样本,测试集包含1280个样本。 Apr 15, 2013 · Towards this goal this dataset has already been used in a blinded form as part of the Medical Image Computing and Computer Assisted Intervention (MICCAI) 2012 challenge “Atrophy Measurement Biomarkers using Structural MRI for Alzheimer's Disease”. The dataset used is sourced from Hugging Face. We have recently developed DenseCNN, a lightweight 3D deep convolutional network model, for AD classification based on hippocampus magnetic resonance imaging (MRI) segments. The Biomarker and Imaging Data Set includes MRI, PET, cerebrospinal fluid measurements (Abeta, P-tau, and T-tau), and limited genetic data (APOE genotype) contributed by a subset of UDS participants. This project aims to create a deep learning model that can accurately classify Alzheimer's Disease using MRI scans. The second dataset (Alzheimer MRI Preprocessed Dataset Citation 2024), ADNI, consisting of 6,400 pre-processed MRI images, served as a validation dataset to ensure that the pre-trained model provides accurate predictions This project utilizes MRI datasets from the Open Access Series of Imaging Studies (OASIS) to develop machine learning models for Alzheimer's disease detection and analysis. In the Advanced search results tab, click Select All and Add To Collection. The study converts 3D MRI data into 2D slices Alzheimer_MRI Disease Classification Dataset The Falah/Alzheimer_MRI Disease Classification dataset is a valuable resource for researchers and health medicine applications. [2] Researchers Home » Dataset Download » Augmented Alzheimer MRI Dataset. Large-scale brain MRI dataset for deep neural network analysis OASIS Alzheimer's Detection | Kaggle Kaggle uses cookies from Google to deliver and enhance the quality of its services and to analyze traffic. In addition to that 518 MRI images of Mild Cognitive Impairment (MCI) were added to the binary classifier dataset to form a total of 1030 MRI scans The Neuropathology (NP) Data Set includes autopsy data collected on UDS and MDS participants using standardized neuropathological evaluation forms. Secondly, a Custom Resnet-18 was trained to classify these images Dataset focuses on the classification of Alzheimer's disease based on MRI scans. It contains MRI images of 26 subjects, of which 10 subjects have AD, 10 subjects have Mild Cognitive impairment (MCI) and 4 subjects are normal controls. Feb 19, 2025 · 4. Description: Explore the MRI Dementia Classification Dataset, featuring MRI images categorized into Mild Dec 14, 2024 · The MIRIAD dataset is a database of volumetric MRI brain-scans of 46 Alzheimer's sufferers and 23 healthy elderly people. The images have been divided into four classes based on Alzheimer's progression. three-dimensional MRI dataset. Readme License. You will need to apply for the data with a brief description of your Project Name Investigators Accession Number Project Summary Sample Size Scanner Type License ; Whole-brain background-suppressed pCASL MRI with 1D-accelerated 3D RARE Stack-Of-Spirals Readout- Dataset 2 Feb 13, 2025 · Alzheimer’s dementia (AD) poses a significant global health challenge, characterized by progressive cognitive decline, memory impairment, and behavioral changes. July 2022; NeuroImage: Clinical 35 Download full-text PDF Read full-text. Despite 96% accuracy, risk of overfitting persists with the large dataset. The examination of Alzheimer's disease (AD) using adaptive machine learning algorithms has unveiled promising findings. alzheimer-image-classification-google-vit-base-patch16 This model is a fine-tuned version of google/vit-base-patch16-224-in21k on the Alzheimer MRI data. This comprehensive dataset provides access to a large collection of MRI scans from individuals diagnosed with AD, MCI, and CN. The labels of Alzheimer’s disease dataset available in Kaggle dataset are: Mild Demented, Moderate Demented, Non-Demented and Very Mild Demented. This dataset consists of 550 3D-MRI exams of the brain at 1. In the Advanced search tab, untick ADNI 3 and tick MRI to download all the MR images. 5T (Table 1), including 307 CN subjects (F = 148, age = 75. 9 and 1. This project uses the Alzheimer’s Disease Neuroimaging Initiative (ADNI) dataset, which contains MRI scans of patients with Alzheimer's Disease and healthy controls. The model classifies MRI into three categories: The model was trained on the Alzheimer’s MRI Preprocessed Dataset obtained from Kaggle, achieving notable accuracies of 99. TRY THIS MODEL. 9261; Model description This repository contains code and resources for classifying Alzheimer's Disease using MRI images. However, we Apr 29, 2022 · The MIRIAD dataset is a publicity available scan database of MRI brain scans consisting of 46 Alzheimer’s patients and 23 normal control cases. Unmatched Precision: The #1 Alzheimer’s MRI Dataset – 99% Accuracy Guaranteed !! The Falah/Alzheimer_MRI Disease Classification dataset is a valuable resource for researchers and health medicine applications. . 69% for binary classification. However, achieving substantial credibility in medical contexts necessitates Jul 7, 2022 · The Open-Access European Prevention of Alzheimer's Dementia (EPAD) MRI dataset and processing workflow. This study aims to perform a comparative analysis of Machine Learning models to determine the model with the best performance in predicting Alzheimer's disease. These data are most appropriately described as a convenience sample, voluntarily submitted by several Alzheimer’s Disease Research Centers (ADRCs). MRI images provide detailed brain structures crucial for this study. They consider MRI and tau PET scans separately, to later ensemble together. This work considers a novel approach by utilizing a reduced version Download both the scans and the clinical data. Also, it The iPython notebooks MRI_Ensemble and PET_Ensemble each use a 9 layer 2D CNN to classify patients in the training set as either cognitively normal (CN) or Alzheimer's disease (AD). Alzheimer’s is feature selection- choosing the right features to feed the deep learning model. This study aims to develop precise diagnostic models for AD by employing machine Dataset: OASIS MRI dataset with 80,000 brain MRI images in . nii files. 2 ± 7. Jan 19, 2025 · This study develops an automatic algorithm for detecting Alzheimer's disease (AD) using magnetic resonance imaging (MRI) through deep learning and feature selection techniques. The images were collected from Firoozgar Hospital in Tehran, Iran. Initially, the study employs pretrained CNN architectures—DenseNet-201, MobileNet-v2, ResNet-18, ResNet-50, ResNet-101, and The MIRIAD dataset is a database of volumetric MRI brain-scans of Alzheimer's sufferers and healthy elderly people. The EPAD imaging dataset includes core (3D T1w, 3D FLAIR) and advanced (ASL, diffusion MRI, and resting-state fMRI) MRI sequences. Participants: 36 of them were diagnosed with Alzheimer's disease (AD group), 23 were diagnosed with Frontotemporal Dementia (FTD group) and 29 were healthy subjects (CN group). Medical input remains crucial for accurate diagnosis, emphasizing the need for extensive data collection. Successful application of machine learning techniques for disease diagnosis Nov 19, 2024 · This paper proposes a framework for the detection of Alzheimer’s disease using 2D MRI brain images, employing the LeNet-5 architecture and a custom convolutional neural network (CNN). 9 ± 5. 6) and 243 patients with AD (F = 130, age = 75. From the main page click on PROJECTS and ADNI. 1)The dataset on Kaggle 2)Comprising MRI images, the dataset enables the analysis of Alzheimer's stages. Due to privacy and ethical considerations, the dataset used in this project is not included in this repository. 2 days ago · Kaggle is the world’s largest data science community with powerful tools and resources to help you achieve your data science goals. Alzheimer's Disease 3. 5T MRI scans from the ADNI1 phase, collected during screening. Oct 4, 2022 · The Alzheimer’ s brain MRI dataset of 6400 images w as collected from Ka ggle [28]. investigates the application of transformer-based models (MAE and DeiT) for diagnosing Alzheimer’s amentia from MRI scans. Since its launch more than a decade ago, the landmark public-private partnership has made major contributions to AD research, enabling the sharing of data Alzheimer's Disease Neuroimaging Initiative (ADNI) is a multisite study that aims to improve clinical trials for the prevention and treatment of Alzheimer’s disease (AD). Experimental results on Alzheimer's Disease Neuroimaging Initiative magnetic resonance imaging (MRI) dataset confirms that the proposed 2D-DCNN model is superior in terms of accuracy, efficiency, and robustness. Download Project . The Alzheimer’s 3DEM Database is a community portal for open access to the newly acquired reference 3D EM data sets produced by NCMIR (and reprocessed legacy datasets), along with example derived data products (e. DeepCurvMRI achieved Download this Dataset Try Pre-Trained Model. MRI, amyloid PET, and tau PET scans and data are available on a subset of UDS participants. Since its launch more than a decade ago, the landmark public-private partnership has made major contributions to AD research, enabling the sharing of data Oct 22, 2024 · Download full-text PDF T1-weighted MRI data from OASIS dataset using different models such for the earlier diagnosis and classification of Alzheimer's disease using the OASIS dataset, This project focused on Alzheimer's disease through three main objectives. Go to Universe Home. 2127; Accuracy: 0. Rescaling by factors of 0. In this study, we used Alzheimer’s MRI images dataset hosted on the Kaggle platform to train DeepCurvMRI for multi and binary classification tasks. In this paper, we have considered papers focusing on (Magnetic resonance Imaging (MRI) data as the input. Many scans were collected from each participant at intervals between 2 weeks and 2 years, and the study was designed to examine the feasibility of using MRI scans as an outcome measure for clinical Mar 23, 2023 · Alzheimer’s disease (AD) is a neurodegenerative disorder characterized by cognitive impairment and aberrant protein deposition in the brain. These images provide detailed anatomical information about the brain's structure. Magnetic Resonance Imaging Comparisons of Demented and Nondemented Adults OASIS-3 is a longitudinal multimodal neuroimaging, clinical, cognitive, and biomarker dataset for normal aging and Alzheimer’s Disease. Alzheimer's Disease. End-to-End Workflow: Includes data preprocessing, augmentation, model training, evaluation, and Nov 20, 2024 · The Alzheimer detection and classification systems include four stages, namely MRI preprocessing, segmentation, feature extraction by Gaussian discriminant analysis (GDA), and classification by support vector machine (SVM). This dataset comprises 80,000 brain MRI images of 461 patients and aims to classify Alzheimer's progression based on Clinical Dementia Rating (CDR) values. In addition to the visual Download scientific diagram | Images from the OASIS dataset (a) AD. 1 enhances the dataset by 1362 images (895 Alzheimer’s Disease and 467 Normal Controls). The proposed methods classify images into four classes, including healthy controls, mild cognitive impairment (MCI), early-stage AD, and advanced-stage AD. Since its launch more than a decade ago, the landmark public-private partnership has made major contributions to AD research, enabling the sharing of data Dec 9, 2023 · Along with cognitive and sociodemographic information, the BrainLat dataset 28 includes anatomical MRI, resting-state fMRI, and resting-state EEG. The dataset aims to provide a valuable resource for analyzing and detecting early signs of Alzheimer's disease. " Using the ADNI dataset (32,559 MRI scans), it classifies AD stages (CN, MCI, AD) with workflows for data preprocessing, model implementation, and evaluation via accuracy, AUC, and confusion matrices. 2 The release of this dataset in an open form (together with the blinding codes from the Augmented Alzheimer MRI Dataset for Better Results on Models. This research of Carcagni et al. It includes MRI brain scans, demographic information, and clinical assessments from a sample of healthy individuals and individuals with Alzheimer's disease. This dataset focuses on the classification of Alzheimer's disease based on MRI scans. For downloading the dataset, we refer the user to the ADNI website . The use of machine learning and brain magnetic resonance imaging (MRI) for the early Deep learning in Python uses a CNN model to categorize brain MRI images for Alzheimer's stages. Download the Alzheimer's MRI Dataset sourced from OASIS, featuring 457 individuals' axial MRI scans, skull-stripped for deep learning research. Rotation by −5 and 5 increases dataset size to 1380 (904 Alzheimer’s Disease and 476 Normal Controls). [1] This cooperative study combines expertise and funding from the private and public sector to study subjects with AD, as well as those who may develop AD and controls with no signs of cognitive impairment. Biomarker data is in the form of CSF values for Abeta, P-tau, and T-tau. Alzheimer's Disease Detection through Whole-Brain 3D-CNN MRI This is the source code used in the paper "Alzheimer's Disease Detection through Whole-Brain 3D-CNN MRI", which has been published on Frontiers in Bioengineering and Biotechnology. The Alzheimer's Disease (AD) Distribution v3. It aims to explore the relationship between MRI data and Alzheimer's, providing insights for early diagnosis and disease progression prediction. The dataset was divided into four different classes: mildly demented, moder ately demented, non-demented, and In recent years, many papers have reported state-of-the-art performance on Alzheimer's Disease classification with MRI scans from the Alzheimer's Disease Neuroimaging Initiative (ADNI) dataset using convolutional neural networks. Dataset focuses on the classification of Alzheimer's disease based on MRI scans. Introduction The Alzheimer MRI Disease Classification dataset is used to classify Alzheimer's disease based on MRI scans. This dataset contains the EEG resting state-closed eyes recordings from 88 subjects in total. The dataset collection was used to train, validate and test the model. Many scans were collected of each participant at intervals from 2 weeks to 2 years, the study was designed to investigate the feasibility of using MRI as an outcome measure for clinical trials of Alzheimer's treatments. from publication: A Novel Deep Learning Based Multi-class Classification Method for Alzheimer’s Disease Detection Using Brain MRI Alzheimer’s Disease Neuroimaging Initiative ADNI T1-weighted MRI pre-processing for deep learning pipelines. 3996 open source Alzheimer images. Feb 15, 2025 · This data set contains data from BRFSS. 5T The European Prevention of Alzheimer Dementia (EPAD) is a multi-center study that aims to characterize the preclinical and prodromal stages of Alzheimer's Disease. 5. This project contains the code to analyze and classify MRI scans to predict the Alzheimer's disease and Mild Cognitive Impairment (MCI) progression. 4)Data Exploration 5)Data Preprocessing 6)Model Access the 3DICOM DICOM library to download medical images compiled from open source medical datasets, all in easily downloadable formats! May 24, 2021 · Background Alzheimer’s disease (AD) is a progressive and irreversible brain disorder. Each model uses 10 coronal central brain slices to ultimately classify patients as CN or AD. The Alzheimer’s Disease Neuroimaging Initiative (ADNI) is a longitudinal multicenter study designed to develop clinical, imaging, genetic, and biochemical biomarkers for the early detection and tracking of Alzheimer’s disease (AD). Limited MRI - Alzheimer dataset by MRI Alzheimer. It is one of the most prominent dementia types observed in patients and which hence underlines the imminent need for potential methods to diagnose the disease early on. The Falah/Alzheimer_MRI Disease Classification dataset is a valuable resource for researchers and health medicine applications. There are total of 8,980 MRI images in 4 different categories, with each category including 2,245 images. It uses two datasets: ADNI and BIOCARD (see below: Scans preparation). It is worth mentioning that deep learning techniques have been Feb 1, 2025 · Alzheimer's is a progressive and degenerative disease affecting millions worldwide, incapacitating them physically and cognitively. Dec 5, 2024 · Availability of large and diverse medical datasets is often challenged by privacy and data sharing restrictions. It achieves the following results on the evaluation set: Loss: 0. In this study, a computer system for early diagnosis of Alzheimer's disease Alzheimer’s disease (AD) is a progressive dementia in which the brain shrinks as the disease progresses. Hippocampus is one of the involved regions and its atrophy is a widely used biomarker for AD diagnosis. from publication: Towards Alzheimer's Disease Classification through Transfer Learning | Detection of Alzheimer's Nov 18, 2022 · Deep Learning multi-class classification of Alzheimer's disease (AD) in dementia patients, using features extracted from structural MRI available in the ADNI dataset to classify AD from cognitive normal (CN) and mild cognitive impairment (MCI), with accuracies of 51,4 and 56,8% . 5 was published on 2024-01-08. Apr 30, 2024 · The main inspiration behind sharing this Dataset is to make a very highly accurate model predict the stage of Alzheimer’s disease . Oct 2, 2023 · The below attached files are those pertinent to image classification of brain MRI scans for Alzheimer's disease prediction. 6% accuracy. lvhrdzhxjckdykurgqzgdycaexyuxfxkcknqqwcvalvgdoccazemkddncspmdgnoehiiksujwhiguz