A Machine Learning-Based Severity Prediction Tool for the Michigan Neuropathy Screening Instrument.
Fahmida HaqueMamun Bin Ibne ReazMuhammad Enamul Hoque ChowdhuryMohd Ibrahim Bin ShapiaiRayaz Ahmed MalikMohammed AlhatouSyoji KobashiIffat AraSawal Hamid Bin Mohd AliAhmad Ashrif A BakarMohammad Arif Sobhan BhuiyanPublished in: Diagnostics (Basel, Switzerland) (2023)
Diabetic sensorimotor polyneuropathy (DSPN) is a serious long-term complication of diabetes, which may lead to foot ulceration and amputation. Among the screening tools for DSPN, the Michigan neuropathy screening instrument (MNSI) is frequently deployed, but it lacks a straightforward rating of severity. A DSPN severity grading system has been built and simulated for the MNSI, utilizing longitudinal data captured over 19 years from the Epidemiology of Diabetes Interventions and Complications (EDIC) trial. Machine learning algorithms were used to establish the MNSI factors and patient outcomes to characterise the features with the best ability to detect DSPN severity. A nomogram based on multivariable logistic regression was designed, developed and validated. The extra tree model was applied to identify the top seven ranked MNSI features that identified DSPN, namely vibration perception (R), 10-gm filament, previous diabetic neuropathy, vibration perception (L), presence of callus, deformities and fissure. The nomogram's area under the curve (AUC) was 0.9421 and 0.946 for the internal and external datasets, respectively. The probability of DSPN was predicted from the nomogram and a DSPN severity grading system for MNSI was created using the probability score. An independent dataset was used to validate the model's performance. The patients were divided into four different severity levels, i.e., absent, mild, moderate, and severe, with cut-off values of 10.50, 12.70 and 15.00 for a DSPN probability of less than 50, 75 and 100%, respectively. We provide an easy-to-use, straightforward and reproducible approach to determine prognosis in patients with DSPN.
Keyphrases
- machine learning
- type diabetes
- cardiovascular disease
- big data
- lymph node metastasis
- ejection fraction
- risk factors
- patient reported outcomes
- squamous cell carcinoma
- end stage renal disease
- physical activity
- randomized controlled trial
- study protocol
- newly diagnosed
- adipose tissue
- functional connectivity
- early onset
- prognostic factors
- insulin resistance
- skeletal muscle
- peritoneal dialysis
- cross sectional
- open label