Accurate clinical discrimination of subjects with back pain is difficu
lt. As an aid to discrimination a probabilistic neural network (PNN) w
as constructed to differentiate categories of paraspinal muscular fitn
ess. The electromyogram (EMG) power spectra from 65 subjects with and
without chronic back pain were used to train the PNN. The PNN was test
ed by comparing the clinical historical diagnosis of back pain in 33 s
ubjects to the PNN classification. Subjects were placed on a test fram
e in 30 degrees of lumbar forward flexion. An isometric load of 2/3 ma
ximum voluntary contraction (MVC) was held constant for 30 s whilst su
rface EMGs were recorded at the level of the left 4th/5th interspace.
The raw EMG was filtered, digitized and power spectra were calculated
using the Fast Fourier Transform. The power spectrum was loaded into t
he input layer of a three layer PNN and propagated to the output layer
that classified the spectrum as normal, abnormal, or unclassifiable.
Ten of eleven normal subjects were correctly classified (specificity 9
1%). Nine of eleven chronic back pain subjects were correctly classifi
ed (sensitivity 82%). One trained athlete and one acute back pain were
classified correctly. The system was unable to classify subjects with
a past history of back pain that was not chronic. Diagnosis of low ba
ck dysfunction using a PNN has been shown to be an accurate method of
categorizing normal and chronic back pain subjects. The results in sub
jects with a past history of back pain at any time of their life illus
trate the difficulty of classification of these subjects. Spectral sha
pe and PNN techniques may be useful in identifying subjects with back
pain who may be at a high risk in the workplace.