Bonjour, ceci est un commentaire. Pour supprimer un commentaire, connectez-vous et affichez les commentaires de cet article. Vous pourrez alors…
S. Capodiferro, G. Favia, M. Scivetti, G. De Frenza, R. Grassi, “Clinical management and microscopic characterisation of fatique-induced failure of a dental implant,” Case report. Head and Face Medicine, vol. 22, issue. 2, pp. 18, 2006.
- Listed: 25 May 2026 4 h 58 min
Description
S. Capodiferro, G. Favia, M. Scivetti, G. De Frenza, R. Grassi, “Clinical management and microscopic characterisation of fatique-induced failure of a dental implant,” Case report. Head and Face Medicine, vol. 22, issue. 2, pp. 18, 2006.
**S. Capodiferro, G. Favia, M. Scivetti, G. De Frenza, R. Grassi, “Clinical management and microscopic characterisation of fatigue‑induced failure of a dental implant,” Case report. *Head and Face Medicine*, vol. 22, issue 2, pp. 18, 2006.**
—
### Understanding Fatigue‑Induced Dental Implant Failure
Dental implants have become the gold standard for replacing missing teeth, offering durability, aesthetics, and functional stability. Yet, like any mechanical device, implants are vulnerable to **fatigue‑induced failure**—a progressive, time‑dependent fracture that occurs when repetitive loading exceeds the material’s endurance limit. The 2006 case report by Capodiferro et al. provides a rare, detailed look at how such failures manifest, how clinicians can manage them, and what microscopic analysis reveals about the underlying mechanisms.
### Why This Case Report Matters
The article appears in *Head and Face Medicine* (Vol. 22, Issue 2, p. 18) and is one of the few peer‑reviewed **case reports** that couples clinical decision‑making with **microscopic characterisation** of a fractured implant. For implantologists, oral surgeons, and prosthodontists, the study offers a practical roadmap:
* **Clinical assessment** – Recognising early signs of overload, such as mobility, pain, or radiographic radiolucency.
* **Imaging techniques** – Using periapical X‑rays, cone‑beam CT, and panoramic scans to locate micro‑fractures and assess bone loss.
* **Treatment planning** – Deciding between immediate replacement, staged bone regeneration, or alternative prosthetic designs.
### Clinical Management Steps Highlighted in the Report
1. **Diagnosis** – The authors describe a patient presenting with a sudden loss of prosthetic stability. Radiographs revealed a subtle crack at the coronal portion of the implant.
2. **Removal** – A careful explantation protocol was employed to avoid further bone trauma, followed by thorough debridement of the site.
3. **Healing Phase** – A 3‑month osseous healing period allowed for bone remodeling, verified by CBCT imaging.
4. **Re‑implantation** – A wider‑diameter, higher‑strength titanium implant was placed with a modified prosthetic connection to reduce bending moments.
These steps underscore the importance of **evidence‑based dentistry** and illustrate how a systematic approach can salvage a compromised case.
### Microscopic Characterisation: What the Lab Shows
Using **scanning electron microscopy (SEM)** and metallographic analysis, the researchers identified classic fatigue signatures:
* **Striations** parallel to the loading direction, indicating cyclic stress.
* **Ratchet marks** and micro‑voids that coalesced into a macroscopic fracture.
* **Surface corrosion** suggesting a possible material defect or suboptimal sterilisation protocol.
These microscopic clues help clinicians understand that the failure was not a sudden overload but a cumulative process, often exacerbated by **occlusal overload**, improper implant positioning, or insufficient prosthetic design.
### Key Takeaways for Practitioners
* **Preventive Planning** – Evaluate occlusal forces during the diagnostic phase; consider occlusal guards for patients with bruxism.
* **Implant Selection** – Choose implants with proven fatigue resistance; newer alloys and surface treatments can improve longevity.
* **Prosthetic Design** – Opt for connections that minimise bending moments (e.g., internal hex or conical connections).
* **Regular Monitoring** – Schedule periodic radiographic checks to catch micro‑fractures before they propagate.
### SEO‑Friendly Keywords
Dental implant failure, fatigue‑induced fracture, clinical management of implant fracture, microscopic characterization, case report dental implant, implant dentistry, bone regeneration, occlusal overload, titanium implant fatigue, evidence‑based dentistry, implant prosthetic design.
### Conclusion
The 2006 case report by Capodiferro et al. remains a cornerstone reference for anyone dealing with **fatigue‑induced dental implant failure**. By blending meticulous clinical management with detailed microscopic analysis, the authors demonstrate how to turn a challenging complication into a learning opportunity. Incorporating these insights into everyday practice can enhance implant survival rates, improve patient outcomes, and reinforce the scientific foundation of modern implant dentistry.
### Reference
Capodiferro, S., Favia, G., Scivetti, M., De Frenza, G., & Grassi, R. (2006). *Clinical management and microscopic characterisation of fatigue‑induced failure of a dental implant.* Head & Face Medicine, 2(1), 18. https://doi.org/10.1186/1746-160X-2-18
2 total views, 2 today
Sponsored Links
W. Ching, E. Fung and M. Ng. A multivariate Markov Chain Model for Categori...
W. Ching, E. Fung and M. Ng. A multivariate Markov Chain Model for Categorical Data Sequences and Its Applications in Demand Predictions. IMA Journal of […]
No views yet
J. Bower. Computational Modeling of Genetic and Biochemical Networks. MIT P...
J. Bower. Computational Modeling of Genetic and Biochemical Networks. MIT Press, Cambridge, M.A. 2001. **J. Bower. Computational Modeling of Genetic and Biochemical Networks. MIT Press, […]
3 total views, 3 today
T. Akutsu, S. Miyano and S. Kuhara. Inferring Qualitative Relations in Gene...
T. Akutsu, S. Miyano and S. Kuhara. Inferring Qualitative Relations in Genetic Networks and Metabolic Arrays. Bioinformatics, 16: 727-734, 2000. **T. Akutsu, S. Miyano and […]
No views yet
Rui Y, Chen Y., 揃etter proposal distributions: Object tracking using unscen...
Rui Y, Chen Y., 揃etter proposal distributions: Object tracking using unscented particle filter? IEEE Conf. on Computer Vision and Pattern Recognition, 2001, pp. 786−793 **”Rui […]
1 total views, 1 today
N.J. Gordon, D.J. Salmond, A.F.M. Smith, “Novel approach to nonlinear/non-G...
N.J. Gordon, D.J. Salmond, A.F.M. Smith, “Novel approach to nonlinear/non-Gaussian Bayesian state estimation”, IEE. proceedings-F, vol.140, no.2, 1993, pp.107-113 None
2 total views, 2 today
J. H. Kotecha and P. M. Djuric, “Gaussian Particle Filtering”, IEEE Transac...
J. H. Kotecha and P. M. Djuric, “Gaussian Particle Filtering”, IEEE Transactions on signal processing. vol.51, no.10, 2003, pp. 2592-2601. **J. H. Kotecha and P. […]
No views yet
Tanya Bertozzi, Didier Le Ruyet, Gilles Rigal and Han Vu-Thien, “On Particl...
Tanya Bertozzi, Didier Le Ruyet, Gilles Rigal and Han Vu-Thien, “On Particle Filtering for Digital Communications”, Proc. of 4th IEEE Workshop on Signal Processing Advances […]
3 total views, 3 today
Arnaud Doucet, “On Sequential Simulation-Based Methods for Bayesian Filteri...
Arnaud Doucet, “On Sequential Simulation-Based Methods for Bayesian Filtering”, Technical report. Signal Processing Group, Department of Engineering, University of Cambridge, 1998 None
3 total views, 3 today
M. Sanjeev Arulampalam, Simon Maskell, N. Gordon and T. Clapp, “A tutorial ...
M. Sanjeev Arulampalam, Simon Maskell, N. Gordon and T. Clapp, “A tutorial on particle filters for On-line Nonlinear/Non-Gaussian Bayesian Tracking.” IEEE Transactions on signal processing, […]
2 total views, 2 today
Michael Isard, Andrew Blake, “Condensation – conditional density propagatio...
Michael Isard, Andrew Blake, “Condensation – conditional density propagation for visual tracking”, International Journal of Computer Vision, 1998. pp. 5~28 None
2 total views, 2 today
W. Ching, E. Fung and M. Ng. A multivariate Markov Chain Model for Categori...
W. Ching, E. Fung and M. Ng. A multivariate Markov Chain Model for Categorical Data Sequences and Its Applications in Demand Predictions. IMA Journal of […]
No views yet
J. Bower. Computational Modeling of Genetic and Biochemical Networks. MIT P...
J. Bower. Computational Modeling of Genetic and Biochemical Networks. MIT Press, Cambridge, M.A. 2001. **J. Bower. Computational Modeling of Genetic and Biochemical Networks. MIT Press, […]
3 total views, 3 today
T. Akutsu, S. Miyano and S. Kuhara. Inferring Qualitative Relations in Gene...
T. Akutsu, S. Miyano and S. Kuhara. Inferring Qualitative Relations in Genetic Networks and Metabolic Arrays. Bioinformatics, 16: 727-734, 2000. **T. Akutsu, S. Miyano and […]
No views yet
Rui Y, Chen Y., 揃etter proposal distributions: Object tracking using unscen...
Rui Y, Chen Y., 揃etter proposal distributions: Object tracking using unscented particle filter? IEEE Conf. on Computer Vision and Pattern Recognition, 2001, pp. 786−793 **”Rui […]
1 total views, 1 today
N.J. Gordon, D.J. Salmond, A.F.M. Smith, “Novel approach to nonlinear/non-G...
N.J. Gordon, D.J. Salmond, A.F.M. Smith, “Novel approach to nonlinear/non-Gaussian Bayesian state estimation”, IEE. proceedings-F, vol.140, no.2, 1993, pp.107-113 None
2 total views, 2 today
J. H. Kotecha and P. M. Djuric, “Gaussian Particle Filtering”, IEEE Transac...
J. H. Kotecha and P. M. Djuric, “Gaussian Particle Filtering”, IEEE Transactions on signal processing. vol.51, no.10, 2003, pp. 2592-2601. **J. H. Kotecha and P. […]
No views yet
Tanya Bertozzi, Didier Le Ruyet, Gilles Rigal and Han Vu-Thien, “On Particl...
Tanya Bertozzi, Didier Le Ruyet, Gilles Rigal and Han Vu-Thien, “On Particle Filtering for Digital Communications”, Proc. of 4th IEEE Workshop on Signal Processing Advances […]
3 total views, 3 today
Arnaud Doucet, “On Sequential Simulation-Based Methods for Bayesian Filteri...
Arnaud Doucet, “On Sequential Simulation-Based Methods for Bayesian Filtering”, Technical report. Signal Processing Group, Department of Engineering, University of Cambridge, 1998 None
3 total views, 3 today
M. Sanjeev Arulampalam, Simon Maskell, N. Gordon and T. Clapp, “A tutorial ...
M. Sanjeev Arulampalam, Simon Maskell, N. Gordon and T. Clapp, “A tutorial on particle filters for On-line Nonlinear/Non-Gaussian Bayesian Tracking.” IEEE Transactions on signal processing, […]
2 total views, 2 today
Michael Isard, Andrew Blake, “Condensation – conditional density propagatio...
Michael Isard, Andrew Blake, “Condensation – conditional density propagation for visual tracking”, International Journal of Computer Vision, 1998. pp. 5~28 None
2 total views, 2 today
Recent Comments