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DSIP

Emideltide, DSIP nonapeptide, Delta sleep-inducing peptide

Quick Stats
Studies 458
Trials 82
2025 pubmed 3 citations

Domain-specific information preservation for Alzheimer's disease diagnosis with incomplete multi-modality neuroimages.

Xu. Haozhe H; Wang. Jian J; Feng. Qianjin Q; Zhang. Yu Y; Ning. Zhenyuan Z

Key Findings

  • A generative adversarial network (SIGAN) can create realistic missing brain‑scan images while preserving details specific to each imaging type.
  • A diagnosis network (SPDN) improves how information from different scan types interacts, boosting classification accuracy.
  • The combined DSIP framework outperforms existing methods in both image‑imputation and disease‑status prediction tasks.

Practical Outcomes

  • For biohackers and self‑experimenters, there is no direct action to take—no dosage, supplement, or lifestyle change is suggested. The work is relevant only to specialists building AI tools for clinical imaging, not to everyday longevity or performance protocols.

Summary

The paper describes a new computer‑based method (called DSIP) that uses artificial intelligence to fill in missing brain scans and then diagnose Alzheimer's disease more accurately. It’s a technical advance for researchers who work with brain imaging data, not a health supplement or protocol that people can use at home.

Abstract

Although multi-modality neuroimages have advanced the early diagnosis of Alzheimer's Disease (AD), missing modality issue still poses a unique challenge in the clinical practice. Recent studies have tried to impute the missing data so as to utilize all available subjects for training robust multi-modality models. However, these studies may overlook the modality-specific information inherent in multi-modality data, that is, different modalities possess distinct imaging characteristics and focus on different aspects of the disease. In this paper, we propose a domain-specific information preservation (DSIP) framework, consisting of modality imputation stage and status identification stage, for AD diagnosis with incomplete multi-modality neuroimages. In the first stage, a specificity-induced generative adversarial network (SIGAN) is developed to bridge the modality gap and capture modality-specific details for imputing high-quality neuroimages. In the second stage, a specificity-promoted diagnosis network (SPDN) is designed to promote the inter-modality feature interaction and the classifier robustness for identifying disease status accurately. Extensive experiments demonstrate the proposed method significantly outperforms state-of-the-art methods in both modality imputation and status identification tasks.

Study Information

Provider

pubmed

Year

2025

Date

2025-01-06T00:00:00.000Z

DOI

10.1016/j.media.2024.103448

Citations

3

References

49