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. 2018 Feb 16;5(2):70–75. doi: 10.1049/htl.2017.0059

Table 5.

Comparison with other works in the literature on osteoporosis classification

Work carried Approach Performance
[7] RB-SVM + hip radiographs 90% Acc, 90% Sn, 87% Sp
[8] HGSF classifier + DPRs of lumbar spine 96.01% Acc, 95.3% Sn, 94.7% Sp
HGSF classifier + DPRs of femoral neck 98.9% Acc, 99.1% Sn, 98.4% Sp
[9] regression SVM + factors from dietary and lifestyle habits values not mentioned
[10] RB-SVM + kNN + micro-CT images values not mentioned
[11] HAC algorithm + RB- SVM + DPRs of lumbar spine 93% Acc, 95.8% Sn, 86.6% Sp
HAC algorithm + RB-SVM + DPRs of femoral neck 89% Acc, 96% Sn, 84% Sp
[12] SVM + X-ray images 95% Acc, Sn and Sp not mentioned
[13] MFFN + WFS Acc not mentioned, 57.9% Sn, 68.9% Sp
Naïve Bayes + WFS Acc not mentioned, 0% Sn, 62% Sp
LR + WFS Acc not mentioned, 40.7% Sn, 62.3% Sp
our proposed method MBO-ANN + DPRs of lumbar spine 97.9% Acc, 95.2% Sn, 98.3% Sp
MBO-ANN + DPRs of femoral neck 99.3% Acc, 100% Sn, 99.2% Sp