Akhil Kasturi’s scientific contributions

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Publications (15)


Distribution of subjects in the subset dataset are listed in this table.
Accuracy Results Comparison for Correlation Coefficient, Random Guess, and Our Method (lsAGC) for five-fold test measures on the dataset.
Enhancing Graph Attention Neural Network Performance for Marijuana Consumption Classification through Large-scale Augmented Granger Causality (lsAGC) Analysis of Functional MR Images
  • Preprint
  • File available

October 2024

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9 Reads

Ali Vosoughi

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Akhil Kasturi

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Axel Wismueller

In the present research, the effectiveness of large-scale Augmented Granger Causality (lsAGC) as a tool for gauging brain network connectivity was examined to differentiate between marijuana users and typical controls by utilizing resting-state functional Magnetic Resonance Imaging (fMRI). The relationship between marijuana consumption and alterations in brain network connectivity is a recognized fact in scientific literature. This study probes how lsAGC can accurately discern these changes. The technique used integrates dimension reduction with the augmentation of source time-series in a model that predicts time-series, which helps in estimating the directed causal relationships among fMRI time-series. As a multivariate approach, lsAGC uncovers the connection of the inherent dynamic system while considering all other time-series. A dataset of 60 adults with an ADHD diagnosis during childhood, drawn from the Addiction Connectome Preprocessed Initiative (ACPI), was used in the study. The brain connections assessed by lsAGC were utilized as classification attributes. A Graph Attention Neural Network (GAT) was chosen to carry out the classification task, particularly for its ability to harness graph-based data and recognize intricate interactions between brain regions, making it appropriate for fMRI-based brain connectivity data. The performance was analyzed using a five-fold cross-validation system. The average accuracy achieved by the correlation coefficient method was roughly 52.98%, with a 1.65 standard deviation, whereas the lsAGC approach yielded an average accuracy of 61.47%, with a standard deviation of 1.44. The suggested method enhances the body of knowledge in the field of neuroimaging-based classification and emphasizes the necessity to consider directed causal connections in brain network connectivity analysis when studying marijuana's effects on the brain.

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Citations (3)


... Zhu et al. introduce Domain Adaptive Transformer (DATR) [20], which utilizes Transformers and domain-adaptive blocks to capture global dependencies and domain-specific features, further enhancing landmark detection performance. By combining the strengths of Transformers and Encoder-Decoder structure, global context and spatial dependencies are effectively captured, enabling accurate detection of anatomical landmarks in chest X-ray images [34]. These results highlight the potential of Transformers in medical image landmark detection and provide strong support for their further application in medical imaging analysis. ...

Reference:

Hybrid Attention Network: An efficient approach for anatomy-free landmark detection
Anatomical landmark detection in chest x-ray images using transformer-based networks
  • Citing Conference Paper
  • April 2024

... Notably, researchers have explored methods to differentiate SZ from other psychiatric disorders and healthy controls based on gray matter density, employing support vector machine (SVM) models [3]. Additionally, some studies have used extended Granger causality to extract features from brain MRIs and subsequently selected features using Kendall's tau rank correlation coefficients, followed by SVM-based classification [4] [5]. Recently, deep learning, with the convolutional neural network (CNN) architecture, has shown significant promise in the field of representation learning from images, even when dealing with 3D structural MRI (sMRI) scans. ...

Large-scale Augmented Granger Causality (lsAGC) for discovery of causal brain connectivity networks in schizophrenia patients using functional MRI neuroimaging
  • Citing Conference Paper
  • April 2023

... Their approach resulted in a high classification accuracy of 91.71%, with a specificity of 94.99% and a sensitivity of 88.69%, demonstrating the MSCN's robustness in distinguishing schizophrenia cases [55]. Wismüller et al. (2023) [56] also contributed significantly to this field by implementing Large-Scale Extended Granger Causality (lsXGC) to analyze directed causal relationships in fMRI data. Their innovative multivariate method achieved an F1 score of 87.40% and an AUC of 95.00%, significantly surpassing traditional connectivity measures [56]. ...

Identification of schizophrenia patients using large-scale Extended Granger Causality (lsXGC) in functional MR imaging
  • Citing Conference Paper
  • April 2023