pith. machine review for the scientific record. sign in

arxiv: 2604.08161 · v1 · submitted 2026-04-09 · 💻 cs.LG

Recognition: unknown

Shift- and stretch-invariant non-negative matrix factorization with an application to brain tissue delineation in emission tomography data

Authors on Pith no claims yet

Pith reviewed 2026-05-10 16:51 UTC · model grok-4.3

classification 💻 cs.LG
keywords non-negative matrix factorizationshift invariancestretch invarianceemission tomographybrain imagingfrequency domaintissue delineation
0
0 comments X

The pith

A frequency-domain non-negative matrix factorization accounts for temporal shifts and stretching to better delineate brain tissue in emission tomography.

A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.

Dynamic neuroimaging data often shows diffusion-like delays and stretching that standard decomposition methods cannot handle well. This paper introduces a shift- and stretch-invariant version of non-negative matrix factorization that models these effects directly. Shifts and stretches are estimated in the frequency domain using phase changes and padding adjustments. When applied to synthetic and real brain emission tomography scans, the approach yields more detailed maps of tissue structures. A reader would care because better modeling of transport dynamics could lead to improved understanding of brain function and pathology.

Core claim

The shift- and stretch-invariant non-negative matrix factorization estimates integer and non-integer temporal shifts along with temporal stretching factors by performing operations in the frequency domain, where shifts become phase modifications and stretching is achieved through zero-padding or truncation, and this yields a more detailed characterization of brain tissue structure in emission tomography data.

What carries the argument

Shift- and stretch-invariant non-negative matrix factorization implemented via frequency-domain phase modifications for shifts and zero-padding or truncation for stretching.

If this is right

  • Standard NMF cannot capture the distance-dependent temporal effects in radiotracer transport data.
  • The frequency-domain implementation allows recovery of non-integer shifts and stretches.
  • Application to brain emission tomography data produces more detailed tissue delineation than conventional methods.
  • Synthetic data validation confirms the model's ability to account for stretching effects.

Where Pith is reading between the lines

These are editorial extensions of the paper, not claims the author makes directly.

  • This approach could extend to other time-series data exhibiting diffusion or scaling effects, such as in fluid dynamics or signal processing.
  • Integration with other neuroimaging modalities might enhance overall brain mapping accuracy.
  • Further development could include handling multiple dimensions of stretching simultaneously.

Load-bearing premise

Frequency-domain phase modifications and zero-padding or truncation recover non-integer shifts and stretches accurately without introducing artifacts or violating non-negativity constraints in real tomography data.

What would settle it

An experiment where ground-truth stretched and shifted components are added to real tomography data, and the model fails to recover the original tissue structures accurately.

read the original abstract

Dynamic neuroimaging data, such as emission tomography measurements of radiotracer transport in blood or cerebrospinal fluid, often exhibit diffusion-like properties. These introduce distance-dependent temporal delays, scale-differences, and stretching effects that limit the effectiveness of conventional linear modeling and decomposition methods. To address this, we present the shift- and stretch-invariant non-negative matrix factorization framework. Our approach estimates both integer and non-integer temporal shifts as well as temporal stretching, all implemented in the frequency domain, where shifts correspond to phase modifications, and where stretching is handled via zero-padding or truncation. The model is implemented in PyTorch (https://github.com/anders-s-olsen/shiftstretchNMF). We demonstrate on synthetic data and brain emission tomography data that the model is able to account for stretching to provide more detailed characterization of brain tissue structure.

Editorial analysis

A structured set of objections, weighed in public.

Desk editor's note, referee report, simulated authors' rebuttal, and a circularity audit. Tearing a paper down is the easy half of reading it; the pith above is the substance, this is the friction.

Referee Report

2 major / 2 minor

Summary. The paper introduces a shift- and stretch-invariant non-negative matrix factorization (NMF) framework for dynamic neuroimaging data exhibiting diffusion-like temporal delays and scale effects. Shifts are modeled via phase factors in the frequency domain and stretching via zero-padding or truncation before inverse FFT; the method is implemented in PyTorch and demonstrated on synthetic data and brain emission tomography measurements to yield more detailed brain tissue characterization.

Significance. If the frequency-domain transformations preserve non-negativity and avoid significant artifacts, the approach could improve decomposition of time-series data with non-integer temporal distortions, offering a principled extension beyond standard NMF for applications in emission tomography. The open-source PyTorch code supports reproducibility, which strengthens the contribution if quantitative validation is added.

major comments (2)
  1. [Abstract] Abstract: the central claim that the model 'accounts for stretching to provide more detailed characterization of brain tissue structure' on synthetic and real data is unsupported, as no quantitative metrics, baselines, reconstruction errors, or statistical comparisons are reported; this directly undermines assessment of the method's effectiveness.
  2. [Method description (frequency-domain construction)] Frequency-domain stretching implementation: zero-padding/truncation for non-integer stretch factors is equivalent to sinc-based resampling and risks introducing Gibbs ringing or post-inverse-FFT negativity in strictly non-negative count data; without reported checks on negativity, L2 error versus ground-truth stretch, or time-domain interpolation baselines, the non-negativity constraint of NMF may be violated in practice.
minor comments (2)
  1. [Abstract] The abstract would be strengthened by including at least one key quantitative result or comparison metric to support the 'more detailed characterization' claim.
  2. Notation for shift (τ) and stretch parameters should be explicitly defined with their estimation procedure to clarify the free parameters.

Simulated Author's Rebuttal

2 responses · 0 unresolved

We thank the referee for the constructive feedback on our manuscript. We address each major comment below and describe the revisions we intend to make.

read point-by-point responses
  1. Referee: [Abstract] Abstract: the central claim that the model 'accounts for stretching to provide more detailed characterization of brain tissue structure' on synthetic and real data is unsupported, as no quantitative metrics, baselines, reconstruction errors, or statistical comparisons are reported; this directly undermines assessment of the method's effectiveness.

    Authors: We agree that the abstract claim is currently unsupported by quantitative evidence. The demonstrations in the manuscript are qualitative, relying on visual inspection of the resulting tissue delineations. In the revised version we will add quantitative validation, including reconstruction errors on synthetic data with known ground-truth factors, comparisons against standard NMF and other baselines, and any applicable statistical measures. These additions will be reflected in both the abstract and a new results subsection. revision: yes

  2. Referee: [Method description (frequency-domain construction)] Frequency-domain stretching implementation: zero-padding/truncation for non-integer stretch factors is equivalent to sinc-based resampling and risks introducing Gibbs ringing or post-inverse-FFT negativity in strictly non-negative count data; without reported checks on negativity, L2 error versus ground-truth stretch, or time-domain interpolation baselines, the non-negativity constraint of NMF may be violated in practice.

    Authors: The referee correctly notes that zero-padding or truncation for non-integer stretches is equivalent to sinc resampling and can introduce ringing or negativity. The current manuscript does not report explicit checks for post-inverse-FFT negativity, L2 stretch errors, or comparisons to time-domain interpolation. In the revision we will add a dedicated analysis subsection that quantifies these effects on synthetic signals, reports the degree of negativity (if any) after the inverse FFT, computes L2 errors against ground-truth stretched signals, and includes a baseline comparison with time-domain linear interpolation. If negativity is observed, we will discuss mitigation within the NMF optimization. revision: yes

Circularity Check

0 steps flagged

No significant circularity detected in the derivation chain

full rationale

The paper presents a modeling extension to standard NMF by incorporating frequency-domain phase shifts for integer/non-integer delays and zero-padding/truncation for stretching. This is framed as a direct implementation choice rather than a derivation that reduces to its own fitted parameters or self-referential definitions. No load-bearing steps equate predictions to inputs by construction, and no self-citation chains or uniqueness theorems imported from prior author work are invoked to force the central result. The framework is self-contained as an algorithmic proposal, with claims supported by demonstrations on synthetic and real data that remain independently testable.

Axiom & Free-Parameter Ledger

2 free parameters · 1 axioms · 0 invented entities

Abstract-only review limits visibility into parameters and assumptions; core model rests on standard NMF non-negativity plus new invariance handling for diffusion effects.

free parameters (2)
  • number of NMF components
    Standard hyperparameter in NMF models, likely selected or cross-validated but not detailed.
  • shift and stretch estimation parameters
    Estimated during optimization; exact form and initialization unknown from abstract.
axioms (1)
  • domain assumption Emission tomography signals admit a non-negative factorization with additive temporal shifts and multiplicative stretching.
    Invoked to justify the invariant model for diffusion-like data.

pith-pipeline@v0.9.0 · 5469 in / 1129 out tokens · 44815 ms · 2026-05-10T16:51:46.580657+00:00 · methodology

discussion (0)

Sign in with ORCID, Apple, or X to comment. Anyone can read and Pith papers without signing in.

Reference graph

Works this paper leans on

20 extracted references · 12 canonical work pages

  1. [1]

    Partial volume effect in SPECT & PET imaging and impact on radionuclide dosimetry es- timates,

    H. Marquis, K. Willowson, and D. Bailey, “Partial volume effect in SPECT & PET imaging and impact on radionuclide dosimetry es- timates,”Asia Oceania Journal of Nuclear Medicine and Biology, 2023.DOI:10.22038/AOJNMB.2022.63827.1448

  2. [2]

    Automatic seg- mentation of dynamic neuroreceptor single-photon emission tomog- raphy images using fuzzy clustering,

    P. D. Acton, L. S. Pilowsky, H. F. Kung, and P. J. Ell, “Automatic seg- mentation of dynamic neuroreceptor single-photon emission tomog- raphy images using fuzzy clustering,”European Journal of Nuclear Medicine, 1999.DOI:10.1007/s002590050425

  3. [3]

    CHAPTER 59 - A Cluster Analysis Approach for the Characteriza- tion of Dynamic PET Data,

    J. Ashburner, J. Haslam, C. Taylor, V . J. Cunningham, and T. Jones, “CHAPTER 59 - A Cluster Analysis Approach for the Characteriza- tion of Dynamic PET Data,” inQuantification of Brain Function Us- ing PET, 1996.DOI:10.1016/B978-012389760-2/50061- X

  4. [4]

    Delineation and quantitation of brain lesions by fuzzy clustering in Positron Emission Tomography,

    A.-E.-O. Boudraa, J. Champier, L. Cinotti, J.-C. Bordet, F. Lavenne, and J.-J. Mallet, “Delineation and quantitation of brain lesions by fuzzy clustering in Positron Emission Tomography,”Computerized Medical Imaging and Graphics, 1996.DOI:10 . 1016 / 0895 - 6111(96)00025-0

  5. [5]

    Segmentation of Dynamic Total-Body [18F]-FDG PET Images Using Unsupervised Cluster- ing,

    M. K. Jaakkola, M. Rantala, A. Jalo, T. Saari, J. Hentil ¨a, J. S. Helin, T. A. Nissinen, O. Eskola, J. Rajander, K. A. Virtanen, J. C. Han- nukainen, F. L´opez-Pic´on, and R. Kl ´en, “Segmentation of Dynamic Total-Body [18F]-FDG PET Images Using Unsupervised Cluster- ing,”International Journal of Biomedical Imaging, 2023.DOI:10. 1155/2023/3819587

  6. [6]

    Noninvasive estimation of cerebral blood flow using image-derived carotid input function in H/sub 2//sup 15/O dynamic PET,

    K. M. Kim, H. Watabe, M. Shidahara, J. Y . Ahn, S. Choi, N. Kudomi, K. Hayashida, Y . Miyake, and H. Iida, “Noninvasive estimation of cerebral blood flow using image-derived carotid input function in H/sub 2//sup 15/O dynamic PET,” in2001 IEEE Nuclear Science Symposium Conference Record (Cat. No.01CH37310), 2001.DOI: 10.1109/NSSMIC.2001.1008569

  7. [7]

    Non-negative matrix factorization of dynamic images in nuclear medicine,

    J. S. Lee, D. Lee, S. Choi, K. S. Park, and D. S. Lee, “Non-negative matrix factorization of dynamic images in nuclear medicine,” in 2001 IEEE Nuclear Science Symposium Conference Record, 2001. DOI:10.1109/NSSMIC.2001.1009222

  8. [8]

    Quantitative evaluation of unsupervised clustering algorithms for dynamic total-body PET im- age analysis,

    O. Rainio, M. K. Jaakkola, and R. Kl ´en, “Quantitative evaluation of unsupervised clustering algorithms for dynamic total-body PET im- age analysis,”Journal of Medical Engineering & Technology, 2025. DOI:10.1080/03091902.2025.2466834

  9. [9]

    Shifted Non-Negative Matrix Factorization,

    M. Mørup, K. H. Madsen, and L. K. Hansen, “Shifted Non-Negative Matrix Factorization,” in2007 IEEE Workshop on Machine Learn- ing for Signal Processing, 2007.DOI:10 . 1109 / MLSP . 2007 . 4414296

  10. [10]

    J., SEJNOWSKI, T

    A. J. Bell and T. J. Sejnowski, “An information-maximization ap- proach to blind separation and blind deconvolution.,”Neural compu- tation, 1995.DOI:10.1162/neco.1995.7.6.1129

  11. [11]

    Learning the parts of objects by non- negative matrix factorization,

    D. D. Lee and H. S. Seung, “Learning the parts of objects by non- negative matrix factorization,”Nature, 1999.DOI:10 . 1038 / 44565

  12. [12]

    Shifted factor analy- sis—Part I: Models and properties,

    R. A. Harshman, S. Hong, and M. E. Lundy, “Shifted factor analy- sis—Part I: Models and properties,”Journal of Chemometrics, 2003. DOI:10.1002/cem.808

  13. [13]

    Time and Frequency Domain Optimization with Shift, Convolution and Smoothness in Factor Analysis Type Decompositions,

    K. H. Madsen, L. K. Hansen, and M. Mørup, “Time and Frequency Domain Optimization with Shift, Convolution and Smoothness in Factor Analysis Type Decompositions,” Report, 2009

  14. [14]

    Bayesian Optimization with Adaptive Surrogate Models for Automated Experimental De- sign

    R. Gu, Y . Rakita, L. Lan, Z. Thatcher, G. E. Kamm, D. O’Nolan, B. Mcbride, A. Wustrow, J. R. Neilson, K. W. Chapman, Q. Du, and S. J. L. Billinge, “Stretched non-negative matrix factorization,”npj Computational Materials, 2024.DOI:10.1038/s41524- 024- 01377-5

  15. [15]

    Time-frequency scaling property of Discrete Fourier Transform (DFT),

    S. A. Talwalkar and S. L. Marple, “Time-frequency scaling property of Discrete Fourier Transform (DFT),” in2010 IEEE International Conference on Acoustics, Speech and Signal Processing, 2010.DOI: 10.1109/ICASSP.2010.5495902

  16. [16]

    Shift-invariant multilinear decomposition of neuroimag- ing data,

    M. Mørup, L. K. Hansen, S. M. Arnfred, L.-H. Lim, and K. H. Madsen, “Shift-invariant multilinear decomposition of neuroimag- ing data,”NeuroImage, 2008.DOI:10.1016/j.neuroimage. 2008.05.062

  17. [17]

    A. S. Olsen, A. Brammer, P. M. Fisher, and M. Moerup,Uncovering dynamic human brain phase coherence networks, 2024.DOI:10 . 1101/2024.11.15.623830

  18. [18]

    Coupled Generator Decomposition for Fusion of Electro- and Magnetoencephalogra- phy Data,

    A. S. Olsen, J. D. Nielsen, and M. Mørup, “Coupled Generator Decomposition for Fusion of Electro- and Magnetoencephalogra- phy Data,” in2024 32nd European Signal Processing Conference (EUSIPCO), 2024.DOI:10 . 23919 / EUSIPCO63174 . 2024 . 10715032

  19. [19]

    Circadian variation in human cerebrospinal fluid production measured by magnetic resonance imaging,

    C. Nilsson, F. St ˚ahlberg, C. Thomsen, O. Henriksen, M. Herning, and C. Owman, “Circadian variation in human cerebrospinal fluid production measured by magnetic resonance imaging,”The Amer- ican Journal of Physiology, 1992.DOI:10 . 1152 / ajpregu . 1992.262.1.R20

  20. [20]

    K-Shape: Efficient and Accurate Clustering of Time Series,

    J. Paparrizos and L. Gravano, “K-Shape: Efficient and Accurate Clustering of Time Series,”SIGMOD Rec., 2016.DOI:10.1145/ 2949741.2949758