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Humanin

HN, S14G-Humanin

Quick Stats
Studies 491
Trials 100
Score 3
2024 pubmed 5 citations

Exploratory risk prediction of type II diabetes with isolation forests and novel biomarkers.

Yousef. Hibba H; Feng. Samuel F SF; Jelinek. Herbert F HF

Key Findings

  • Adding oxidative‑stress, inflammation, and mitochondrial biomarkers (including humanin) improves diabetes risk prediction over traditional markers alone
  • Humanin was identified as one of the top predictive features, surpassing BMI, glucose, and triglycerides
  • The Isolation Forest model achieved high performance (F1≈0.81, recall≈0.81) in detecting high‑risk individuals

Practical Outcomes

  • Consider adding humanin level testing to your regular health panel to get an early warning of diabetes risk. If levels are low, you might explore interventions that boost mitochondrial health and reduce oxidative stress, such as targeted supplements, exercise, and anti‑inflammatory strategies. However, no specific dosage or treatment protocol for humanin is provided in this study.

Summary

A new AI model that looks at blood markers of stress, inflammation, and mitochondrial health can spot people who might develop type‑2 diabetes earlier than traditional tests. Humanin, a tiny protein linked to mitochondria, turned out to be one of the strongest signals, even more important than weight or blood sugar levels. This means tracking humanin could help biohackers catch diabetes risk sooner, though the study doesn’t tell you how to change it.

Abstract

Type II diabetes mellitus (T2DM) is a rising global health burden due to its rapidly increasing prevalence worldwide, and can result in serious complications. Therefore, it is of utmost importance to identify individuals at risk as early as possible to avoid long-term T2DM complications. In this study, we developed an interpretable machine learning model leveraging baseline levels of biomarkers of oxidative stress (OS), inflammation, and mitochondrial dysfunction (MD) for identifying individuals at risk of developing T2DM. In particular, Isolation Forest (iForest) was applied as an anomaly detection algorithm to address class imbalance. iForest was trained on the control group data to detect cases of high risk for T2DM development as outliers. Two iForest models were trained and evaluated through ten-fold cross-validation, the first on traditional biomarkers (BMI, blood glucose levels (BGL) and triglycerides) alone and the second including the additional aforementioned biomarkers. The second model outperformed the first across all evaluation metrics, particularly for F1 score and recall, which were increased from 0.61 ± 0.05 to 0.81 ± 0.05 and 0.57 ± 0.06 to 0.81 ± 0.08, respectively. The feature importance scores identified a novel combination of biomarkers, including interleukin-10 (IL-10), 8-isoprostane, humanin (HN), and oxidized glutathione (GSSG), which were revealed to be more influential than the traditional biomarkers in the outcome prediction. These results reveal a promising method for simultaneously predicting and understanding the risk of T2DM development and suggest possible pharmacological intervention to address inflammation and OS early in disease progression.

Study Information

Provider

pubmed

Year

2024

Date

2024-06-22T00:00:00.000Z

DOI

10.1038/s41598-024-65044-x

Citations

5

References

70