Submitted:
13 September 2025
Posted:
16 September 2025
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. Materials and Methods
2.1. Mouse Cohort and Sample Preparation
2.2. Photon-Counting CT Scanning
2.3. Artifact Correction
2.4. Image Reconstruction
2.5. Material Decomposition
2.6. Image Quality Assessment
2.7. Femur Feature Extraction
2.8. Statistical Analysis of Femur Features
2.8.1. Tests for Normality and Homogeneity of Variance
2.8.2. Multi-factor Generalized Linear Models
2.8.3. Stratified Subgroup Analyses
2.9. Qualitative Assessment of Trabecular Structure
3. Results
3.1. Image Quality Assessment
3.2. Statistical Analysis of Femur Features
3.2.1. Multi-factor Generalized Linear Models
3.2.2. Stratified Subgroup Analyses
3.3. Qualitative Assessment of Trabecular Structure
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
| Femur Feature | Shapiro-Wilk p-value | Levene p-value |
|---|---|---|
| MeanThick 2D | 0.5626 | 0.8362 |
| MeanThick 3D | 0.5977 | 0.7124 |
| BV/TV | < 10-4 | 0.0556 |
| TbTh_mean | 0.0025 | 0.6208 |
| TbSp_mean | 0.0020 | 0.0360 |
| Surface Area | < 10-4 | 0.0908 |
| Mean Ca Conc | 0.1799 | 0.9911 |



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| Genotype | Female | Male | Total |
|---|---|---|---|
| APOE22 | 5 | 5 | 10 |
| APOE33 | 5 | 5 | 10 |
| APOE44 | 5 | 5 | 10 |
| APOE22HN | 6 | 3 | 9 |
| APOE33HN | 5 | 5 | 10 |
| APOE44HN | 5 | 3 | 8 |
| Total | 31 | 26 | 57 |
| Group (# of mice) | Age in Months (Mean + Std Dev) |
|---|---|
| APOE22 (10) | 18.88 + 2.88 |
| APOE33 (10) | 18.45 + 5.12 |
| APOE44 (10) | 19.63 + 1.37 |
| APOE22HN (9) | 16.45 + 1.32 |
| APOE33HN (10) | 14.06 + 1.09 |
| APOE44HN (8) | 19.5 + 1.54 |
| Female (31) | 17.74 + 3.38 |
| Male (26) | 17.86 + 3.19 |
| All Mice (57) | 17.79 + 3.27 |
| Femur Feature | Predictor | Coefficient | BH FDR Corrected p-value | Interpretation |
|---|---|---|---|---|
| BV/TV | Genotype[T.APOE44] | 9.08937 | 0.00976 | APOE44 has a significant positive effect on log(BV/TV) relative to APOE33. |
| BV/TV | Sex[T.Female]:HN[T.HN] | -2.85595 | <1e-5 | The combination of female sex and HN expression has a significant negative effect on log(BV/TV). |
| BV/TV | Age:Genotype[T.APOE44] | -0.484397 | 0.00518 | The change in log(BV/TV) per 1 month increase in age is significantly more negative (i.e., more age-dependent decline) in the APOE44 group than in the APOE33 group. |
| Surface Area | Sex[T.Female]:HN[T.HN] | -2.19199 | <1e-5 | The combination of female sex and HN expression has a significant negative effect on log(Surface Area). |
| Femur Feature | Predictor | Subgroup | BH FDR Corrected p-value | Interpretation |
|---|---|---|---|---|
| MeanThick2D | Sex | HN | 0.03339 | Significant difference in MeanThick2D between female HN mice and male HN mice. |
| BV/TV | Sex | HN | 3.6770e-05 | Significant difference in BV/TV between female HN mice and male HN mice. |
| TbSp_mean | Sex | HN | 3.6770e-05 | Significant difference in TbSp_mean between female HN mice and male HN mice. |
| Surface Area | Sex | HN | 3.6770e-05 | Significant difference in surface area between female HN mice and male HN mice. |
| BV/TV | HN | Female | 0.00050 | Significant difference in BV/TV between female HN mice and female non-HN mice. |
| TbSp_mean | HN | Female | 0.00060 | Significant difference in TbSp_mean between female HN mice and female non-HN mice. |
| Surface Area | HN | Female | 0.00060 | Significant difference in surface area between female HN mice and female non-HN mice. |
| APOE22 Female | APOE22 Male | APOE33 Female | APOE33 Male | APOE44 Female | APOE44 Male | |
| BV/TV | 0.00433 | 0.78571 | 0.09524 | 0.84127 | 0.02381 | 0.78571 |
| TbSp_mean | 0.00433 | 0.58929 | 0.15079 | 0.46429 | 0.02381 | 0.75000 |
| Surface Area | 0.00433 | 0.58929 | 0.15079 | 0.46429 | 0.05556 | 0.78571 |
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