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Vol. 11, No. 1:

An Automatic Liver Tumor Detection Method Using Moving Means

Laramie Paxton, Marian University, USA
Yufeng Cao, University of Southern California, USA
Kevin Vixie, Washington State University, USA
Yuan Wang, Washington State University, USA
Chaan Ng, University of Texas, USA
Brian Hobbs, Cleveland Clinic, USA
Abstract:
We present an automatic liver segmentation method that utilizes the time series data in conjunction with the Boykov-Kolmogorov (BK) graph cut algorithm and uses a novel approach of moving means for each of the sample healthy and tumor tissue intensities (from a separate data set) to iterate and improve the initial graph cut segmentation. Thus, there is no training process required since the initial sample means are computed in advance using Regions of Interest provided by radiologists. This method provides a reasonable degree of accuracy for an automatic segmentation scheme, yielding a mean Dice similarity coefficient (DSC) of 77 percent, a relative volume di erence (RVD) of 21.6 percent, and a volumetric overlap error (VOE) of 35.7 percent. The algorithm is simple to implement computationally, and the mean runtime of 5.1 minutes is reasonable given that no training process is necessary. The main contribution of this model is to allow the healthy and tumor means to move so that a more optimal segmentation can be obtained.
Full Paper (in PDF)

A Comparison of Feature Vectors in a Graph Cut-Based Liver Segmentation Algorithm

Laramie Paxton, Marian University-Wisconsin, USA
Yufeng Cao, University of Southern California, USA
Kevin Vixie, Washington State University, USA
Yuan Wang, Washington State University, USA
Chaan Ng, University of Texas, USA
Brian Hobbs, Cleveland Clinic, USA
Abstract:
Liver image segmentation presents a challenging set of conditions and is an active area of research. In this paper, we compare the effectiveness of five different feature vectors used in a preprocessing step for a graph cutbased semi-automatic liver segmentation algorithm. The feature vectors tested are formed using a median filter, averaging filter, Gaussian filter, neighborhood, and novel use of time series data. When compared to the expert-provided ground truth, the time series approach outperforms the others and yields results comparable to other recent models in the literature, giving a mean volume error (VOE) of 32.9 percent, mean Dice similarity coefficient (DSC) of 0.8, and mean runtime of 74 seconds. We also include a modified boundary term in the energy functional and normalize both terms in order to avoid further scaling of the boundary term. In place of a training process, we utilize sample Regions of Interest provided by expert radiologists to compute sample vector means for healthy and tumor tissues that are used in the regional term of the functional.
Contribution: The time series feature vector method represents a novel approach that utilizes the time series data obtained from a sequence of 59 CT scans as a preprocessing step, along with using a simplified boundary term in the energy functional.
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Parkinson's Disease Detection Using ResNet50 with Transfer Learning

Nusrat Jahan, Jagannath University, Bangladesh
Arifatun Nesa, Jagannath University, Bangladesh
Md. Abu Layek, Jagannath University, Bangladesh
Abstract:
Parkinson's disease (PD) is an incurable neurological disorder disease. But there is still no standard medical provision to identify Parkinson's disease. In this study, a fine motor symptom that is sketching has been studied. The experiments are done on a significant number of PD patients and Healthy Group (without PD). We proposed a system that can determine the sketching and reports whether a PD patient's sketch or not. Deep learning algorithms can deal with the solution of different brain generalizing neural networks with the same design. Thus, we applied Convolutional Neural Network (CNN) to classify sketched images to discriminate or identify Parkinson's Disease (PD) affected patients from the regular healthy (without PD) control group. The experiment was done on different CNN models with transfer learning method and applying on Spiral and Wave sketched data. The proposed system achieved 96.67% accuracy on the ResNet50 model with spiral sketching.
Contribution: The main contribution of this paper is, we have used Transfer learning which enhanced the model performance.
Full Paper (in PDF)

Bangla-English Neural Machine Translation with Bidirectional Long Short-Term Memory and Back Translation

Arna Roy, Khulna University of Engineering & Technology, Bangladesh
Argha Chandra Dhar, Khulna University of Engineering & Technology, Bangladesh
M. A. H. Akhand, Khulna University of Engineering & Technology, Bangladesh
Md Abdus Samad Kamal, Gunma University, Japan
Abstract:
Machine translation (MT) has recently drawn attention to the automatic translation of the text, documents, or webpages from one language to another. Among various MT approaches, neural MT (NMT) is the most feasible method, a data-driven approach consisting of special neural networks. Among thousands of natural languages, remarkable efforts on MT are concentrated on a few languages only; and the research is very limited for many major languages such as Bangla. The study aims to build an effective NMT system for Bangla-English MT. Bidirectional Long Short-Term Memory (BiLSTM), a popular deep learning method for sequential data operation, is considered in the present study. Attention mechanism with the BiLSTM model and a special data augmentation mechanism, called Back Translation (BT), are the significant features of the proposed model. The proposed model outperforms the prominent models for Bangla to English MT while tested on a benchmark dataset.
Contribution: A BiLSTM with attention mechanism is proposed that is trained considering BT and found effective for lowresource Bangla-English MT cases.
Full Paper (in PDF)

Comparison of Prognostic Determinants after Myocardial Infarction using Holter ECG Data at 72-h

Emi Yuda, Tohoku University, Japan
Itaru Kaneko, Tohoku University, Japan
Yutaka Yoshida, Nagoya City University, Japan
Junichiro Hayano, Heartbeat Science Lab Co., Ltd., Japan
Abstract:
Development of in medical sensor technology, it is possible to measure human bio-signals over long periods of time. In particular, electrocardiogram (ECG) data obtained by long-term measurement in hospitals can contribute to the construction of bioindicators for human diseases, which have high prognostic power for cardiac diseases. In previous studies, it has predicted the presence of myocardial necrosis, vascular occlusion, and myocardial ischemia mainly by detecting characteristic ECG findings such as abnormal Q waves, ST interval elevation, and coronary T waves from ECG waveform. In this study, we compared heart rate variability (HRV) indices predictive of myocardial infarction calculated from 72-hour Holter ECG RR interval data with indices calculated from 24-hour data. The HRV indices of 5 subjects in the young group (mean 22 y) and 5 subjects in the middle-aged group (mean 46 y) were compared, and we revealed the usefulness of the 72-hour data for some indices, such as standard deviation NN interval (SDNN).
Contribution: We have shown that it is desirable to analyze data obtained from long-term measurements in order to calculate prognostic indices for cardiac diseases using heart HRV indices.
Full Paper (in PDF)

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