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1.
Clin EEG Neurosci ; : 15500594241273181, 2024 Sep 09.
Artículo en Inglés | MEDLINE | ID: mdl-39251228

RESUMEN

Background: Although there are many treatment options available for depression, a large portion of patients with depression are diagnosed with treatment-resistant depression (TRD), which is characterized by an inadequate response to antidepressant treatment. Identifying the TRD population is crucial in terms of saving time and resources in depression treatment. Recently several studies employed various methods on EEG datasets for automatic depression detection or treatment outcome prediction. However, no previous study has used the deep learning (DL) approach and EEG signals for detecting treatment resistance. Method: 77 patients with TRD, 43 patients with non-TRD, and 40 healthy controls were compared using GoogleNet convolutional neural network and DL on EEG data. Additionally, Class Activation Maps (CAMs) acquired from the TRD and non-TRD groups were used to obtain distinctive regions for classification. Results: GoogleNet classified the healthy controls and non-TRD group with 88.43%, the healthy controls and TRD subjects with 89.73%, and the TRD and non-TRD group with 90.05% accuracy. The external validation accuracy for the TRD-non-TRD classification was 73.33%. Finally, the CAM analysis revealed that the TRD group contained dominant features in class detection of deep learning architecture in almost all electrodes. Limitations: Our study is limited by the moderate sample size of clinical groups and the retrospective nature of the study. Conclusion: These findings suggest that EEG-based deep learning can be used to classify treatment resistance in depression and may in the future prove to be a useful tool in psychiatry practice to identify patients who need more vigorous intervention.

2.
Eur Arch Otorhinolaryngol ; 281(1): 359-367, 2024 Jan.
Artículo en Inglés | MEDLINE | ID: mdl-37578497

RESUMEN

INTRODUCTION: We aimed to develop a diagnostic deep learning model using contrast-enhanced CT images and to investigate whether cervical lymphadenopathies can be diagnosed with these deep learning methods without radiologist interpretations and histopathological examinations. MATERIAL METHOD: A total of 400 patients who underwent surgery for lymphadenopathy in the neck between 2010 and 2022 were retrospectively analyzed. They were examined in four groups of 100 patients: the granulomatous diseases group, the lymphoma group, the squamous cell tumor group, and the reactive hyperplasia group. The diagnoses of the patients were confirmed histopathologically. Two CT images from all the patients in each group were used in the study. The CT images were classified using ResNet50, NASNetMobile, and DenseNet121 architecture input. RESULTS: The classification accuracies obtained with ResNet50, DenseNet121, and NASNetMobile were 92.5%, 90.62, and 87.5, respectively. CONCLUSION: Deep learning is a useful diagnostic tool in diagnosing cervical lymphadenopathy. In the near future, many diseases could be diagnosed with deep learning models without radiologist interpretations and invasive examinations such as histopathological examinations. However, further studies with much larger case series are needed to develop accurate deep-learning models.


Asunto(s)
Aprendizaje Profundo , Linfadenopatía , Humanos , Diagnóstico Diferencial , Estudios Retrospectivos , Linfadenopatía/diagnóstico por imagen , Linfadenopatía/patología , Cuello/patología
3.
Clin EEG Neurosci ; 54(2): 151-159, 2023 Mar.
Artículo en Inglés | MEDLINE | ID: mdl-36052402

RESUMEN

Automatic detection of Attention Deficit Hyperactivity Disorder (ADHD) based on the functional Magnetic Resonance Imaging (fMRI) through Deep Learning (DL) is becoming a quite useful methodology due to the curse of-dimensionality problem of the data is solved. Also, this method proposes an invasive and robust solution to the variances in data acquisition and class distribution imbalances. In this paper, a transfer learning approach, specifically ResNet-50 type pre-trained 2D-Convolutional Neural Network (CNN) was used to automatically classify ADHD and healthy children. The results demonstrated that ResNet-50 architecture with 10-k cross-validation (CV) achieves an overall classification accuracy of 93.45%. The interpretation of the results was done via the Class Activation Map (CAM) analysis which showed that children with ADHD differed from controls in a wide range of brain areas including frontal, parietal and temporal lobes.


Asunto(s)
Trastorno por Déficit de Atención con Hiperactividad , Imagen por Resonancia Magnética , Niño , Humanos , Imagen por Resonancia Magnética/métodos , Electroencefalografía , Encéfalo , Aprendizaje Automático
4.
Clin EEG Neurosci ; : 15500594221137234, 2022 Nov 06.
Artículo en Inglés | MEDLINE | ID: mdl-36341750

RESUMEN

Background: Bipolar disorder (BD) is a mental disorder characterized by depressive and manic or hypomanic episodes. The complexity in the diagnosis of Bipolar disorder (BD) due to its overlapping symptoms with other mood disorders prompted researchers and clinicians to seek new and advanced techniques for the precise detection of Bipolar disorder (BD). One of these methods is the use of advanced machine learning algorithms such as deep learning (DL). However, no study of BD has previously adopted DL techniques using EEG signals. Method: EEG signals of 169 BD patients and 45 controls were cleaned from the artifacts and processed using two different DL methods: a one-dimensional convolutional neural network (1D-CNN) combined with the long-short term memory (LSTM) and a two-dimensional convolutional neural network (2D-CNN). Additionally, Class Activation Maps (CAMs) acquired from the bipolar and control groups were used to obtain distinctive regions to specify a particular class in an image. Results: Group identifications were confirmed with 95.91% overall accuracy through the 2D-CNN method, demonstrating very high sensitivity and lower specificity. Also, the overall accuracy obtained from the 1D-CNN + LSTM method was 93%. We also found that F4, C3, F7, and F8 electrode activities produce predominant features to detect the bipolar group. Conclusion: To our knowledge, this study used EEG-based DL analysis for the first time in BD. Our results suggest that the raw EEG-based DL algorithm can successfully differentiate individuals with BD from controls. Class Activation Map (CAM) analysis suggests that prefrontal changes are predominant in EEG data of patients with BD.

5.
Z Med Phys ; 2022 Dec 31.
Artículo en Inglés | MEDLINE | ID: mdl-36593139

RESUMEN

Today, as in every life-threatening disease, early diagnosis of brain tumors plays a life-saving role. The brain tumor is formed by the transformation of brain cells from their normal structures into abnormal cell structures. These formed abnormal cells begin to form in masses in the brain regions. Nowadays, many different techniques are employed to detect these tumor masses, and the most common of these techniques is Magnetic Resonance Imaging (MRI). In this study, it is aimed to automatically detect brain tumors with the help of ensemble deep learning architectures (ResNet50, VGG19, InceptionV3 and MobileNet) and Class Activation Maps (CAMs) indicators by employing MRI images. The proposed system was implemented in three stages. In the first stage, it was determined whether there was a tumor in the MR images (Binary Approach). In the second stage, different tumor types (Normal, Glioma Tumor, Meningioma Tumor, Pituitary Tumor) were detected from MR images (Multi-class Approach). In the last stage, CAMs of each tumor group were created as an alternative tool to facilitate the work of specialists in tumor detection. The results showed that the overall accuracy of the binary approach was calculated as 100% on the ResNet50, InceptionV3 and MobileNet architectures, and 99.71% on the VGG19 architecture. Moreover, the accuracy values of 96.45% with ResNet50, 93.40% with VGG19, 85.03% with InceptionV3 and 89.34% with MobileNet architectures were obtained in the multi-class approach.

6.
Clin Exp Hypertens ; 42(6): 553-558, 2020 Aug 17.
Artículo en Inglés | MEDLINE | ID: mdl-32009491

RESUMEN

PURPOSE: Anxiety is one of the most important causes of hypertension, increasing direct blood pressure and affecting postoperative morbidity and mortality. The aim of this study was to investigate the effects of showing the operating room on preoperative anxiety and hemodynamics among patients with hypertension. METHODS: We enrolled 90 patients with hypertension undergoing cholecystectomy in this trial. Patients were randomly divided into two groups using a sealed-envelope system. Group STOR was shown the operating room the day before surgery, while Group No STOR was not shown the operating room. RESULTS: State-Trait Anxiety Inventory scores measured on the day of surgery were lower for Group STOR (43.2 ± 6.0) than Group No STOR (49.8 ± 7.9) (p = .001). Systolic (p = .001, p = .006, respectively), diastolic (p = .001, p = .004, respectively), and heart rate (p = .018, p = .031, respectively) values in the operation room and preoperative unit were lower in Group STOR than in Group No STOR. The number of postponed operations in Group STOR was lower than in Group No STOR (p = .043), and the patient satisfaction score in Group STOR was higher than in Group No STOR (p = .031). CONCLUSION: In patients with hypertension, preoperative anxiety, blood pressure, heart rate, and respiratory rate all increase in the preoperative unit and operation room. Our findings indicate that showing the operating room to patients with hypertension decreases preoperative anxiety, as well as blood pressure and heart rate inside the operating room and preoperative unit. It also reduces the number of postponed operations and increases patient satisfaction.


Asunto(s)
Ansiedad , Colecistectomía , Hemodinámica , Hipertensión , Quirófanos , Cuidados Preoperatorios , Ansiedad/etiología , Ansiedad/fisiopatología , Ansiedad/prevención & control , Colecistectomía/métodos , Colecistectomía/psicología , Información de Salud al Consumidor/métodos , Femenino , Humanos , Hipertensión/fisiopatología , Hipertensión/prevención & control , Hipertensión/psicología , Masculino , Persona de Mediana Edad , Prioridad del Paciente , Cuidados Preoperatorios/métodos , Cuidados Preoperatorios/psicología
7.
Brain Sci ; 9(5)2019 May 17.
Artículo en Inglés | MEDLINE | ID: mdl-31109020

RESUMEN

The studies implemented with Electroencephalogram (EEG) signals are progressing very rapidly and brain computer interfaces (BCI) and disease determinations are carried out at certain success rates thanks to new methods developed in this field. The effective use of these signals, especially in disease detection, is very important in terms of both time and cost. Currently, in general, EEG studies are used in addition to conventional methods as well as deep learning networks that have recently achieved great success. The most important reason for this is that in conventional methods, increasing classification accuracy is based on too many human efforts as EEG is being processed, obtaining the features is the most important step. This stage is based on both the time-consuming and the investigation of many feature methods. Therefore, there is a need for methods that do not require human effort in this area and can learn the features themselves. Based on that, two-dimensional (2D) frequency-time scalograms were obtained in this study by applying Continuous Wavelet Transform to EEG records containing five different classes. Convolutional Neural Network structure was used to learn the properties of these scalogram images and the classification performance of the structure was compared with the studies in the literature. In order to compare the performance of the proposed method, the data set of the University of Bonn was used. The data set consists of five EEG records containing healthy and epilepsy disease which are labeled as A, B, C, D, and E. In the study, A-E and B-E data sets were classified as 99.50%, A-D and B-D data sets were classified as 100% in binary classifications, A-D-E data sets were 99.00% in triple classification, A-C-D-E data sets were 90.50%, B-C-D-E data sets were 91.50% in quaternary classification, and A-B-C-D-E data sets were in the fifth class classification with an accuracy of 93.60%.

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