Recent advances in generative adversarial networks for gene expression data: a comprehensive review
M Lee - Mathematics, 2023 - mdpi.com
The evolving field of generative artificial intelligence (GenAI), particularly generative deep
learning, is revolutionizing a host of scientific and technological sectors. One of the pivotal …
learning, is revolutionizing a host of scientific and technological sectors. One of the pivotal …
[PDF][PDF] Develo** GANs for Synthetic Medical Imaging Data: Enhancing Training and Research
Medical imaging has become integral to modern healthcare, enabling non-invasive
visualization and assessment of anatomical structures. However, medical imaging datasets …
visualization and assessment of anatomical structures. However, medical imaging datasets …
Generative Adversarial Networks Assist Missing Data Imputation: A Comprehensive Survey & Evaluation
Missing data imputation is a technique to deal with incomplete datasets. Since many models
and algorithms cannot be applied to data containing missing values, a pre-processing step …
and algorithms cannot be applied to data containing missing values, a pre-processing step …
Unveiling the Secrets: How Masking Strategies Shape Time Series Imputation
In this study, we explore the impact of different masking strategies on time series imputation
models. We evaluate the effects of pre-masking versus in-mini-batch masking, normalization …
models. We evaluate the effects of pre-masking versus in-mini-batch masking, normalization …
How Deep is your Guess? A Fresh Perspective on Deep Learning for Medical Time-Series Imputation
We introduce a novel classification framework for time-series imputation using deep
learning, with a particular focus on clinical data. By identifying conceptual gaps in the …
learning, with a particular focus on clinical data. By identifying conceptual gaps in the …
Fine-tuning--a Transfer Learning approach
Secondary research use of Electronic Health Records (EHRs) is often hampered by the
abundance of missing data in this valuable resource. Missingness in EHRs occurs naturally …
abundance of missing data in this valuable resource. Missingness in EHRs occurs naturally …
A Comprehensive Bibliometric Analysis of Missing Value imputation
Data quality plays a crucial role in tasks, such as enhancing the accuracy of data analytics
and avoiding the accumulation of redundant data. One of the significant challenges in data …
and avoiding the accumulation of redundant data. One of the significant challenges in data …
An Imputation Approach to Electronic Medical Records Based on Time Series and Feature Association
YF Yin, ZW Yuan, JX Yang, XJ Bao - Asian-Pacific Conference on Medical …, 2023 - Springer
Due to the interruption of network transmission, the collected electronic medical records are
usually incomplete data. Therefore, the imputation of missing values is of great significance …
usually incomplete data. Therefore, the imputation of missing values is of great significance …
An Efficient Clustering Algorithm on Next-Generation Sequence Data
The clustering algorithms are an unsupervised machine learning methodology widely
utilized in various fields to find and identify patterns in data. In bioinformatics, clustering …
utilized in various fields to find and identify patterns in data. In bioinformatics, clustering …
Inference genové exprese pomocí umělých neuronových sítí
K Vladimír - 2024 - dspace.cvut.cz
Merení genové exprese je nezbytné pro porozumení bunecným procesum a stavum v
rozlicných experimentálních podmínkách, což je potreba v ruzných oblastech …
rozlicných experimentálních podmínkách, což je potreba v ruzných oblastech …