Tamil Nadu researchers' X-ray spectral analysis detects early-stage dental caries
Washington, August 23 : Researchers at RMK Engineering College in Tamil Nadu have come
up with findings that may make it easy to detect the first signs of dental caries, which
can be lethal in extreme cases.
R. Siva Kumar, a researchers in the Department of Electronics and Communication
Engineering, describes dental caries-colloquially known as tooth decay or dental
cavities-as an infectious disease that damages the structures of teeth.
He says that the disease causes toothache, tooth loss, infection of the jawbone and
beyond, and in severe cases, death.
Caries are caused by acid-producing bacteria that feed on fermentable carbohydrates
including sucrose, fruit sugars, and glucose. The higher level of acidity in the mouth due
to this bacterial activity effectively dissolves the mineral content of the tooth.
There are two types of dental caries-those that form on the smooth surfaces of the
teeth, and those in the pits and fissures.
Siva Kumar points out that the latter are difficult to detect visually or manually with
a dental explorer.
According to him, detecting caries in the early stages of development is important for
saving affected teeth, and avoiding the possibility of tooth loss and invasive surgery at
later stages.
The researcher says that X-rays of a patient's teeth analysed by specialist software
may offer a solution to these problems.
He has revealed that his team has developed an X-ray image analysis technique that
reveals the pixel intensities at different X-ray wavelengths, much like the histogram
analysis of images by a high-specification digital camera.
Siva Kumar says that the software reveals that the X-ray histogram and spectrum are
very different depending on whether the teeth X-rayed are normal or exhibiting the early
stages of decay.
In the X-ray histogram, the pixel intensities are concentrated in different ranges
depending on degree of decay, he adds.
He believes that dental clinicians may find this technique very useful, and that it may
be extended using neural networks to automatically identify the different stages of dental
caries.
--ANI