Method for predicting hospitalization stress injury healing based on big data mining model
A model prediction and pressure technology, applied in the field of predicting the healing of hospitalized pressure injuries based on big data mining models, can solve the problems of lack of comprehensive evaluation system and incomplete prognosis of pressure injury, and achieve the effect of promoting healing
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Embodiment 1
[0041] Example 1: The patient is less than 75 years old, the hospitalization period is 3 days, the latest albumin value is 35, the Braden score is 15, and the partial cortical defect with exposed dermis is identified as a second-stage pressure injury patient with an area of 0.4cm 2 ;
[0042] According to the regression equation predicting the probability of healing in patients with pressure injuries:
[0043] Logit(P)=-4.073+0.027*3+0.062*35+0.186*15
[0044] =-4.073+0.081+2.17+2.79
[0045] =96.8%
[0046] The model predicts that the probability of healing is 96.8%, which is difficult for low-risk patients to heal. The patient recovered well when he was actually discharged from the hospital.
Embodiment 2
[0047] Example 2: The patient is older than 75 years old, the hospital stay is 90 days, the latest albumin value is 60, the Braden score is 12, and the full-thickness skin and tissue defect is identified as a fourth-stage pressure injury patient with an area of about 4cm 2 ;
[0048] According to the regression equation predicting the probability of healing in patients with pressure injuries:
[0049] Logit(P)=-4.073-0.475+0.027*90+0.062*60+0.186*12-2.362-1.188
[0050] =-4.548+2.43+3.72+2.232-3.55
[0051] =28.4%
[0052] After the model prediction, the probability of healing is 28.4%, which is difficult for high-risk patients. In fact, the wound was not easy to heal for a long time, and he was discharged from the hospital with sores.
Embodiment 3
[0053] Example 3: The patient is less than 75 years old, the hospitalization period is 80 days, the latest albumin value is 57, the Braden score is 12, full-thickness skin defect, fat, granulation tissue or skin involution can be seen in the defect, which is identified as three-stage pressure Injured patient with an area of 2.1 cm 2 ;
[0054] Regression equation predicting the probability of healing in patients with pressure injuries: 7.623
[0055] Logit(P)=-4.073+0.027*80+0.062*57+0.186*12-1.326-1.124
[0056] =-4.073+2.16+3.534+2.232-3.55
[0057] =30.3%
[0058] According to the prediction of the model, the probability of healing is 30.3%, making it difficult for high-risk patients to heal. In fact, the wound was not easy to heal for a long time, and he was discharged from the hospital with sores.
[0059] This prediction model predicts the healing risk of clinical pressure injury by extracting the general characteristics, disease-related characteristics, and blood...
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