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1.
Ageing Res Rev ; 91: 102072, 2023 11.
Article in English | MEDLINE | ID: mdl-37709055

ABSTRACT

Alzheimer's Disease (AD) is a brain disorder that causes the brain to shrink and eventually causes brain cells to die. This neurological condition progressively hampers cognitive and memory functions, along with the ability to carry out fundamental tasks over time. From the symptoms it is very difficult to detect during its early stage. It has become necessary to develop a computer assisted diagnostic models for the early AD detection. This survey work, discussed about a review of 110 published AD detection methods and techniques from the year 2011 to till-date. This study lies in its comprehensive exploration of AD detection methods using a range of artificial intelligence (AI) techniques and neuroimaging modalities. By collecting and analysing 50 papers related to AD diagnosis datasets, the study provides a comprehensive understanding of the diversity of input types, subjects, and classes used in AD research. Summarizing 60 papers on methodologies gives researchers a succinct overview of various approaches that contribute to enhancing detection accuracy. From the review, data are acquired and pre-processed form multiple modalities of neuroimaging. This paper mainly focused on review of different datasets used, various feature extraction methods, parameters used in neuro images. To diagnosis the Alzheimer's disease, the existing methods utilized three most common artificial intelligence techniques such as machine learning, deep learning, and transfer learning. We conclude this survey work by providing future perspectives for AD diagnosis at early stage.


Subject(s)
Alzheimer Disease , Humans , Alzheimer Disease/diagnostic imaging , Artificial Intelligence , Neuroimaging/methods , Diagnosis, Computer-Assisted , Machine Learning , Brain/diagnostic imaging , Magnetic Resonance Imaging/methods
2.
Sci Rep ; 13(1): 8516, 2023 05 25.
Article in English | MEDLINE | ID: mdl-37231044

ABSTRACT

COVID-19, a global pandemic, has killed thousands in the last three years. Pathogenic laboratory testing is the gold standard but has a high false-negative rate, making alternate diagnostic procedures necessary to fight against it. Computer Tomography (CT) scans help diagnose and monitor COVID-19, especially in severe cases. But, visual inspection of CT images takes time and effort. In this study, we employ Convolution Neural Network (CNN) to detect coronavirus infection from CT images. The proposed study utilized transfer learning on the three pre-trained deep CNN models, namely VGG-16, ResNet, and wide ResNet, to diagnose and detect COVID-19 infection from the CT images. However, when the pre-trained models are retrained, the model suffers the generalization capability to categorize the data in the original datasets. The novel aspect of this work is the integration of deep CNN architectures with Learning without Forgetting (LwF) to enhance the model's generalization capabilities on both trained and new data samples. The LwF makes the network use its learning capabilities in training on the new dataset while preserving the original competencies. The deep CNN models with the LwF model are evaluated on original images and CT scans of individuals infected with Delta-variant of the SARS-CoV-2 virus. The experimental results show that of the three fine-tuned CNN models with the LwF method, the wide ResNet model's performance is superior and effective in classifying original and delta-variant datasets with an accuracy of 93.08% and 92.32%, respectively.


Subject(s)
COVID-19 , Humans , COVID-19/diagnostic imaging , SARS-CoV-2 , Computers , Machine Learning , Tomography, X-Ray Computed
3.
Sci Rep ; 12(1): 21557, 2022 12 13.
Article in English | MEDLINE | ID: mdl-36513786

ABSTRACT

Sentiment analysis is a process in Natural Language Processing that involves detecting and classifying emotions in texts. The emotion is focused on a specific thing, an object, an incident, or an individual. Although some tasks are concerned with detecting the existence of emotion in text, others are concerned with finding the polarities of the text, which is classified as positive, negative, or neutral. The task of determining whether a comment contains inappropriate text that affects either individual or group is called offensive language identification. The existing research has concentrated more on sentiment analysis and offensive language identification in a monolingual data set than code-mixed data. Code-mixed data is framed by combining words and phrases from two or more distinct languages in a single text. It is quite challenging to identify emotion or offensive terms in the comments since noise exists in code-mixed data. The majority of advancements in hostile language detection and sentiment analysis are made on monolingual data for languages with high resource requirements. The proposed system attempts to perform both sentiment analysis and offensive language identification for low resource code-mixed data in Tamil and English using machine learning, deep learning and pre-trained models like BERT, RoBERTa and adapter-BERT. The dataset utilized for this research work is taken from a shared task on Multi task learning DravidianLangTech@ACL2022. Another challenge addressed by this work is the extraction of semantically meaningful information from code-mixed data using word embedding. The result represents an adapter-BERT model gives a better accuracy of 65% for sentiment analysis and 79% for offensive language identification when compared with other trained models.


Subject(s)
Deep Learning , Multilingualism , India , Sentiment Analysis , Language , Natural Language Processing , Oligonucleotides
4.
Indian J Gynecol Oncol ; 20(3): 28, 2022.
Article in English | MEDLINE | ID: mdl-35702634

ABSTRACT

Importance: Exploring methods to mitigate the effect of COVID-19 pandemic on routine cancer screening activities among women. Objective: To investigate the effectiveness of telephone-based outreach as a substitute for physical screening for breast among screened women, during COVID-19 lockdown. Design/Setting/Subjects: Asymptomatic women aged 30-59 years were screened for breast and cervix cancers in the Chennai region, between January 2017 and March 2020 and are due for screening follow-up. A database from the population-based cancer screening program organized by the Cancer Institute during the above period was used for the study. Outcome data were obtained through the period from October 2020 to March 2021. Intervention: Phone-based breast self-examination awareness, inquiry about breast cancer symptoms, and guiding clinical management. Outcome Measure: Compliance to BSE protocol after 8-16 weeks, presence of significant symptoms, and incidence of early breast cancer. Results: Among 12,242 screened women, 6716 (56.8%) responded to a phone-based BSE intervention and 53 women had breast-related symptoms. Thirty-two (60.4%) women reported for further evaluation, and five invasive breast cancers were identified. Conclusion and Relevance: In a low-resource setting where there are no existent screening programs, simple interventions like teaching breast self-examination of women through tele-counseling can result in early detection of breast cancers.

5.
Comput Intell Neurosci ; 2022: 8014979, 2022.
Article in English | MEDLINE | ID: mdl-35463234

ABSTRACT

Retinal abnormalities have emerged as a serious public health concern in recent years and can manifest gradually and without warning. These diseases can affect any part of the retina, causing vision impairment and indeed blindness in extreme cases. This necessitates the development of automated approaches to detect retinal diseases more precisely and, preferably, earlier. In this paper, we examine transfer learning of pretrained convolutional neural network (CNN) and then transfer it to detect retinal problems from Optical Coherence Tomography (OCT) images. In this study, pretrained CNN models, namely, VGG16, DenseNet201, InceptionV3, and Xception, are used to classify seven different retinal diseases from a dataset of images with and without retinal diseases. In addition, to choose optimum values for hyperparameters, Bayesian optimization is applied, and image augmentation is used to increase the generalization capabilities of the developed models. This research also provides a comparison of the proposed models as well as an analysis of them. The accuracy achieved using DenseNet201 on the Retinal OCT Image dataset is more than 99% and offers a good level of accuracy in classifying retinal diseases compared to other approaches, which only detect a small number of retinal diseases.


Subject(s)
Deep Learning , Retinal Diseases , Bayes Theorem , Humans , Neural Networks, Computer , Retinal Diseases/diagnostic imaging , Tomography, Optical Coherence/methods
6.
Big Data ; 10(3): 215-229, 2022 06.
Article in English | MEDLINE | ID: mdl-34851735

ABSTRACT

One of the world's most widely grown crops is corn. Crop loss due to diseases has a major economic effect, putting the food supply in jeopardy. In many parts of the world, lack of infrastructure still slows disease diagnosis. In this context, effective detection of corn leaf diseases is necessary to limit any unfavorable impacts on the yield. This research has been carried out on the corn leaf images, having three classes of diseases and one healthy class, collected from web resources by using the densely connected convolutional neural networks (CNNs). In this work, VGG16, a variant of CNN, is investigated to classify the infected and healthy leaves. We conduct four different sets of experiments using pretrained VGG16 as a classifier, feature extractor, and fine-tuner. To improve our results, Bayesian optimization is used to choose optimal values for hyperparameters, and transfer learning is explored to fine-tune and reduce the training time of the proposed models. In comparison with earlier proven methods, transfer learning on VGG16 produced better results by leveraging a test accuracy of more than 97% while requiring less training time.


Subject(s)
Neural Networks, Computer , Zea mays , Bayes Theorem , Machine Learning , Plant Leaves
7.
Expert Syst ; 39(6): e12834, 2022 Jul.
Article in English | MEDLINE | ID: mdl-34898797

ABSTRACT

Following the COVID-19 pandemic, there has been an increase in interest in using digital resources to contain pandemics. To avoid, detect, monitor, regulate, track, and manage diseases, predict outbreaks and conduct data analysis and decision-making processes, a variety of digital technologies are used, ranging from artificial intelligence (AI)-powered machine learning (ML) or deep learning (DL) focused applications to blockchain technology and big data analytics enabled by cloud computing and the internet of things (IoT). In this paper, we look at how emerging technologies such as the IoT and sensors, AI, ML, DL, blockchain, augmented reality, virtual reality, cloud computing, big data, robots and drones, intelligent mobile apps, and 5G are advancing health care and paving the way to combat the COVID-19 pandemic. The aim of this research is to look at possible technologies, processes, and tools for addressing COVID-19 issues such as pre-screening, early detection, monitoring infected/quarantined individuals, forecasting future infection rates, and more. We also look at the research possibilities that have arisen as a result of the use of emerging technology to handle the COVID-19 crisis.

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