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Related Concept Videos

Comparing Copy Number Variations and SNPs02:26

Comparing Copy Number Variations and SNPs

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Sequencing of the human genome has opened up several best-kept secrets of the genome. Scientists have identified thousands of genome variations that exist within a population. These variations can be a single nucleotide or a larger chromosomal variation.
Copy number variations or CNVs are the structural variations that cover more than 1kb of DNA sequence. The single nucleotide polymorphism (SNP), on the other hand, is a single nucleotide change or a point mutation that is found in more than 1%...
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Signal Flow Graphs01:18

Signal Flow Graphs

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Signal-flow graphs offer a streamlined and intuitive approach to representing control systems, providing an alternative to traditional block diagrams. These graphs use branches to symbolize systems and nodes to represent signals, effectively illustrating the relationships and interactions within the system.
In a signal-flow graph, branches denote the system's transfer functions, while nodes represent the signals. The direction of signal flow is indicated by arrows, with the corresponding...
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Next-generation Sequencing03:00

Next-generation Sequencing

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The first human genome sequencing project cost $2.7 billion and was declared complete in 2003, after 15 years of international cooperation and collaboration between several research teams and funding agencies. Today, with the advent of next-generation sequencing technologies, the cost and time of sequencing a human genome have dropped over 100 fold.
Next-Generation Sequencing Methods
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The Power Flow Problem and Solution01:26

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Power flow problem analysis is fundamental for determining real and reactive power flows in network components, such as transmission lines, transformers, and loads. The power system's single-line diagram provides data on the bus, transmission line, and transformer. Each bus k in the system is characterized by four key variables: voltage magnitude Vk​, phase angle δk​, real power Pk​, and reactive power Qk​. Two of these four variables are inputs, while the power flow program computes...
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Network Function of a Circuit01:25

Network Function of a Circuit

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Frequency response analysis in electrical circuits provides vital insights into a circuit's behavior as the frequency of the input signal changes. The transfer function, a mathematical tool, is instrumental in understanding this behavior. It defines the relationship between phasor output and input and comes in four types: voltage gain, current gain, transfer impedance, and transfer admittance. The critical components of the transfer function are the poles and zeros.
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Genome Copying Errors02:46

Genome Copying Errors

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DNA replication is a well-evolved process that copies millions of base pairs with high fidelity during each cell division. Occasionally a wrong base or a long stretch of wrong bases may get added to the daughter strands. If the errors are left unchecked, cells might accumulate several mutations that might endanger their  survival. Therefore, the copying errors are checked and repaired at three levels.
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Related Experiment Video

Updated: Jan 8, 2026

Detection of Copy Number Alterations Using Single Cell Sequencing
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Sequence-to-graph alignment based copy number calling using a network flow formulation.

Hugo Magalhães, Jonas Weber, Gunnar W Klau

    Biorxiv : the Preprint Server for Biology
    |December 15, 2025
    PubMed
    Summary
    This summary is machine-generated.

    Floco improves copy number (CN) calling accuracy for genome graphs by using a network flow formulation. This method enhances disease association studies and genome assembly validation by providing more consistent CN predictions.

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    Detection of Rare Mutations in CtDNA Using Next Generation Sequencing
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    Area of Science:

    • Genomics
    • Bioinformatics
    • Computational Biology

    Background:

    • Copy number (CN) variation influences phenotypic differences and is crucial for disease association and genome assembly.
    • Traditional CN calling relies on linear reference genomes, struggling with complex genomic structures and rearrangements.
    • Existing graph-based methods for CN prediction often overlook graph topology, leading to inconsistencies.

    Purpose of the Study:

    • To introduce Floco, a novel method for copy number calling on genome graphs.
    • To leverage network flow and integer linear programming for accurate CN estimation within graph structures.
    • To improve upon existing read depth-based CN calling methods, especially for complex genomes.

    Main Methods:

    • Floco utilizes a network flow formulation applied to genome graphs.
    • It calculates raw CN probabilities per graph node using the Negative Binomial distribution and base pair coverage.
    • Integer linear programming is employed to compute CN flow across the entire graph.

    Main Results:

    • Floco demonstrated up to a 43% increase in CN prediction accuracy compared to read depth estimation alone.
    • The method was tested on diverse datasets, including HiFi and ONT reads across three different graphs.
    • High concordance (up to 93.2%) was achieved between predictions from multiple sequence sources.

    Conclusions:

    • Floco offers a significant advancement in copy number calling for genome graphs.
    • The network flow approach addresses limitations of traditional methods and enhances prediction accuracy.
    • Floco provides a robust tool for genomic analyses involving complex structural variations and graph-based representations.