Submitted:
01 October 2025
Posted:
02 October 2025
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Abstract
Keywords:
1. Introduction
1.1. X-Ray Interpretation for Spinal Lesion
1.2. Contributions
2. Proposed Method
2.1. The Framework
2.2. Dataset
3. Model Development
4. Evaluation and Results
5. Accessibility and Affordability of MRI and CT in LMICs
6. Conclusions
References
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| Lesion Type | No. of X-ray Images | No. of Annotations |
|---|---|---|
| Other Lesions | 108 | 128 |
| Osteophytes | 678 | 2683 |
| Spondylolisthesis | 257 | 289 |
| Disc space Narrowing | 602 | 924 |
| Foraminal stenosis | 271 | 387 |
| Surgical implant | 18 | 27 |
| Vertebral collapse | 28 | 35 |
| No finding | 3491 | NA (Same as No. of X-Ray Images) |
| Lesion Type | No. of X-ray Images | No. of Annotations |
|---|---|---|
| Other Lesions | 0 | 0 |
| Osteophytes | 154 | 609 |
| Spondylolisthesis | 62 | 69 |
| Disc space Narrowing | 148 | 231 |
| Foraminal stenosis | 60 | 95 |
| Surgical implant | 0 | 0 |
| Vertebral collapse | 0 | 0 |
| No finding | 234 | NA (Same as No. of X-Ray Images) |
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