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Stardust: improving spatial transcriptomics data analysis through space aware modularity optimization based clustering

View ORCID ProfileSimone Avesani, View ORCID ProfileEva Viesi, Luca Alessandrì, Giovanni Motterle, View ORCID ProfileVincenzo Bonnici, View ORCID ProfileMarco Beccuti, View ORCID ProfileRaffaele Calogero, View ORCID ProfileRosalba Giugno
doi: https://doi.org/10.1101/2022.04.27.489655
Simone Avesani
1Department of Computer Science, University of Verona, Verona, 37134, Italy
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  • For correspondence: rosalba.giugno@univr.it
Eva Viesi
1Department of Computer Science, University of Verona, Verona, 37134, Italy
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Luca Alessandrì
2Department of Molecular Biotechnology and Health Sciences, University of Turin, Turin, 10126, Italy
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Giovanni Motterle
1Department of Computer Science, University of Verona, Verona, 37134, Italy
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Vincenzo Bonnici
4Department of Mathematical, Physical and Computer Sciences, University of Parma, Parma, 43121, Italy
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Marco Beccuti
3Department of Computer Science, University of Turin, Turin, 10149, Italy
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Raffaele Calogero
2Department of Molecular Biotechnology and Health Sciences, University of Turin, Turin, 10126, Italy
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Rosalba Giugno
1Department of Computer Science, University of Verona, Verona, 37134, Italy
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Abstract

Background Spatial transcriptomics (ST) combines stained tissue images with spatially resolved high-throughput RNA sequencing. The spatial transcriptomic analysis includes challenging tasks like clustering, where a partition among data points (spots) is defined by means of a similarity measure. Improving clustering results is a key factor as clustering affects subsequent downstream analysis. State-of-the-art approaches group data by taking into account transcriptional similarity and some by exploiting spatial information as well. However, it is not yet clear how much the spatial information combined with transcriptomics improves the clustering result.

Results We propose a new clustering method, Stardust, that easily exploits the combination of space and transcriptomic information in the clustering procedure through a manual or fully automatic tuning of algorithm parameters. Moreover, a parameter-free version of the method is also provided where the spatial contribution depends dynamically on the expression distances distribution in the space. We evaluated the proposed methods results by analysing ST datasets available on the 10x Genomics website and comparing clustering performances with state-of-the-art approaches by measuring the spots stability in the clusters and their biological coherence. Stability is defined by the tendency of each point to remain clustered with the same neighbours when perturbations are applied.

Conclusions Stardust is an easy-to-use methodology allowing to define how much spatial information should influence clustering on different tissues and achieving more stable results than state-of-the-art approaches.

Competing Interest Statement

The authors have declared no competing interest.

  • Abbreviations

    CSS
    Cell Stability Score
    DCIS
    Ductal Carcinoma In Situ
    DLPFC
    Dorsolateral Prefrontal Cortex
    GenSA
    Generalized Simulated Annealing
    HBC1
    Human Breast Cancer 1
    HBC2
    Human Breast Cancer
    HH
    Human Heart
    HLN
    Human Lymph Node
    HMRF
    Hidden Markov Random Field
    H&E
    Hematoxylin & Eosin
    IC
    Invasive Carcinoma
    KNN
    K-Nearest Neighbor
    MCMC
    Markov chain Monte Carlo
    MK
    Mouse Kidney
    MRF
    Markov Random Field
    PC
    Principal Component
    PCA
    Principal Component Analysis
    rCASC
    reproducible Classification Analysis of Single Cell Sequencing Data
    RDS
    R Data Serialized
    scRNA-seq
    Single-cell RNA sequencing
    ST
    Spatial Transcriptomics
  • Copyright 
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    Posted May 10, 2022.
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    Stardust: improving spatial transcriptomics data analysis through space aware modularity optimization based clustering
    Simone Avesani, Eva Viesi, Luca Alessandrì, Giovanni Motterle, Vincenzo Bonnici, Marco Beccuti, Raffaele Calogero, Rosalba Giugno
    bioRxiv 2022.04.27.489655; doi: https://doi.org/10.1101/2022.04.27.489655
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    Stardust: improving spatial transcriptomics data analysis through space aware modularity optimization based clustering
    Simone Avesani, Eva Viesi, Luca Alessandrì, Giovanni Motterle, Vincenzo Bonnici, Marco Beccuti, Raffaele Calogero, Rosalba Giugno
    bioRxiv 2022.04.27.489655; doi: https://doi.org/10.1101/2022.04.27.489655

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