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Investigation of the tribological behaviour of electrocodeposited Ni-MoS2 composite coatings
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Date
2017-01-01
Author
Güler, Ebru Saraloglu
Konca, Erkan
Karakaya, İshak
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Objective. To discuss a patient with a prenatal diagnosis of unilateral isolated femoral focal deficiency. Case. Antenatal diagnosis of unilateral isolated femoral focal deficiency was made at 20 weeks of gestation. The length of left femur was shorter than the right, and fetal femur length was below the fifth percentile. Proximal femoral focal deficiency was diagnosed. After delivery, the diagnosis was confirmed with skeletal radiographs and magnetic resonance imaging. In prenatal ultrasonographic examination, the early recognition and exclusion of skeletal dysplasias is important; moreover, treatment plans should be initiated, and valuable information should be provided to the family.
Subject Keywords
Electrocodeposition
,
MoS2 particle
,
Friction
,
Wear
,
Surfactant
,
Sodium lignosulfonate
,
SLS
URI
https://hdl.handle.net/11511/33186
Journal
International Journal of Surface Science and Engineering
DOI
https://doi.org/10.1504/ijsurfse.2017.088120
Collections
Department of Metallurgical and Materials Engineering, Article
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E. S. Güler, E. Konca, and İ. Karakaya, “Investigation of the tribological behaviour of electrocodeposited Ni-MoS2 composite coatings,”
International Journal of Surface Science and Engineering
, pp. 418–432, 2017, Accessed: 00, 2020. [Online]. Available: https://hdl.handle.net/11511/33186.