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New NeuroMark SPECT template identified replicable perfusion networks in schizophrenia cohortsCan brain scans reveal hidden patterns in schizophrenia without needing new drugs?

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Key Takeaway
Note that new NeuroMark SPECT template identified networks in schizophrenia cohorts; further validation required.

Researchers analyzed participants from two large sample SPECT datasets alongside an independent schizophrenia dataset to evaluate a new NeuroMark SPECT template utilizing spatially constrained ICA. The primary objective was the estimation of canonical perfusion covariance patterns, also known as networks. The study design involved applying blind ICA to the initial large samples and subsequently applying the sc-ICA template to the independent dataset.

The main results indicated that replicable SPECT networks were successfully identified using blind ICA applied to the two large sample SPECT datasets. Furthermore, the utility of the NeuroMark SPECT template was demonstrated by applying sc-ICA to the independent schizophrenia dataset. Specific effect sizes, absolute numbers, p-values, or confidence intervals were not reported in the provided evidence.

Safety data, including adverse events, serious adverse events, discontinuations, and tolerability, were not reported. The study limitations are not explicitly detailed in the input data. Consequently, the certainty of these findings regarding clinical utility remains uncertain based on the available information.

The practice relevance is currently unclear as specific performance metrics and comparative data against existing standards were not provided. Clinicians should interpret these preliminary findings with caution until further data on safety, efficacy, and reproducibility are established in broader clinical contexts.

Imagine trying to find a specific melody in a crowded room. That is what researchers are doing with brain scans for people with schizophrenia. They want to find clear patterns of blood flow that show how different parts of the brain work together. Finding these patterns could help doctors understand the condition better without relying on trial-and-error with new medicines.

The team used a special computer method called spatially constrained ICA to look at data from two large groups of patients. They found that these brain networks were consistent and could be repeated. When they tested this same method on a completely separate group of people with schizophrenia, the patterns held up. This suggests the method is useful for spotting these brain signatures.

However, this is a study of brain images, not a treatment. The researchers did not test any new drugs or see if patients felt better. They also did not report any safety issues because no one took a new medicine. This work is a step toward understanding the brain, but it does not mean a new cure is ready yet.

What this means for you:
A new brain scan method finds consistent patterns in schizophrenia, but it is a research tool, not a treatment.

Study Details

Study typeCohort
EvidenceLevel 3
PublishedApr 2026
View Original Abstract ↓
Single photon emission computed tomography (SPECT) is a highly specialized imaging modality that enables measurement of regional cerebral perfusion and, in particular, resting cerebral blood flow (rCBF). Recent technological advances have improved SPECT quantification and reliability, making it increasingly useful for studying rCBF abnormalities and perfusion network alterations in psychiatric and neurological disorders. To characterize large scale functional organization in SPECT data, data driven decomposition methods such as independent component analysis (ICA) have been used to extract covarying perfusion patterns that map onto interpretable brain networks. Blind ICA provides a data driven approach to estimate these networks without strong prior assumptions. More recently, a hybrid approach that leverages spatial priors to guide a spatially constrained ICA (sc ICA) have been used to fully automate the ICA analysis while also providing participant-specific network estimates. While this has been reliably demonstrated in fMRI with the NeuroMark template, there is currently no comparable SPECT template. A SPECT template would enable automatic estimation of functional SPECT networks with participant-specific expressions that correspond across participants and studies. The current study introduces a new replicable NeuroMark SPECT template for estimating canonical perfusion covariance patterns (networks). We first identify replicable SPECT networks using blind ICA applied to two large sample SPECT datasets. We then demonstrate the use of the resulting template by applying sc-ICA to an independent schizophrenia dataset. In sum, this work presents and shares the first NeuroMark SPECT template and demonstrating its utility in an independent cohort, providing a scalable and robust framework for network-based analyses.
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