DANCE: Deep Learning-Assisted Analysis of Protein Sequences Using Chaos Enhanced Kaleidoscopic Images
Taslim Murad, Prakash Chourasia, Sarwan Ali, Imdad Ullah Khan, Murray Patterson

TL;DR
This paper introduces DANCE, a novel method that converts T-cell receptor protein sequences into kaleidoscopic images using chaos game representation, enabling deep learning models to classify sequences related to cancer targets.
Contribution
DANCE combines chaos game representation with kaleidoscopic imaging to create visual embeddings of protein sequences for deep learning classification.
Findings
Effective classification of TCR sequences related to cancer.
Visual patterns correlate with protein properties.
New image-based approach enhances protein analysis.
Abstract
Cancer is a complex disease characterized by uncontrolled cell growth. T cell receptors (TCRs), crucial proteins in the immune system, play a key role in recognizing antigens, including those associated with cancer. Recent advancements in sequencing technologies have facilitated comprehensive profiling of TCR repertoires, uncovering TCRs with potent anti-cancer activity and enabling TCR-based immunotherapies. However, analyzing these intricate biomolecules necessitates efficient representations that capture their structural and functional information. T-cell protein sequences pose unique challenges due to their relatively smaller lengths compared to other biomolecules. An image-based representation approach becomes a preferred choice for efficient embeddings, allowing for the preservation of essential details and enabling comprehensive analysis of T-cell protein sequences. In this…
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Taxonomy
TopicsFractal and DNA sequence analysis · Cell Image Analysis Techniques
MethodsDomain Adaptative Neighborhood Clustering via Entropy Optimization
