| Literature DB >> 35055402 |
Sang Ho Oh1, Su Jin Lee2, Jongyoul Park1,3.
Abstract
Precision medicine is a new approach to understanding health and disease based on patient-specific data such as medical diagnoses; clinical phenotype; biologic investigations such as laboratory studies and imaging; and environmental, demographic, and lifestyle factors. The importance of machine learning techniques in healthcare has expanded quickly in the last decade owing to the rising availability of vast multi-modality data and developed computational models and algorithms. Reinforcement learning is an appealing method for developing efficient policies in various healthcare areas where the decision-making process is typically defined by a long period or a sequential process. In our research, we leverage the power of reinforcement learning and electronic health records of South Koreans to dynamically recommend treatment prescriptions, which are personalized based on patient information of hypertension. Our proposed reinforcement learning-based treatment recommendation system decides whether to use mono, dual, or triple therapy according to the state of the hypertension patients. We evaluated the performance of our personalized treatment recommendation model by lowering the occurrence of hypertension-related complications and blood pressure levels of patients who followed our model's recommendation. With our findings, we believe that our proposed hypertension treatment recommendation model could assist doctors in prescribing appropriate antihypertensive medications.Entities:
Keywords: Q-learning; diabetes; healthcare management; hypertension; precision medicine; reinforcement learning; treatment recommendation
Year: 2022 PMID: 35055402 PMCID: PMC8781402 DOI: 10.3390/jpm12010087
Source DB: PubMed Journal: J Pers Med ISSN: 2075-4426
Statistics of data set used.
| Category | Male | Female |
|---|---|---|
| Sex (%) | 56 | 44 |
| Age, mean (SD) | 57 (22) | 63 (23) |
| Period of having hypertension (years), mean (SD) | 7.1 (3.4) | 7.8 (2.8) |
| BMI (kg/m2), mean (SD) | 27.9 (2.5) | 28.2 (3.2) |
| FPG (mg/dL), mean (SD) | 143.8 (53.2) | 147.6 (51.6) |
| TC (mg/dL), mean (SD) | 184.2 (47.3) | 191.2 (47.9) |
| Systolic BP (mmHg), mean (SD) | 132.5 (25.8) | 138.5 (26.7) |
| Diastolic BP (mmHg), mean (SD) | 84.8 (17.6) | 87.9 (16.8) |
| Smoker (%) | 64 | 41 |
| Family history of hypertension (%) | 34 | 38 |
Types and ICD-10 codes of hypertension complications.
| Types of Complications | ICD-10 Codes |
|---|---|
| Heart disease | I11 |
| Chronic kidney disease | I12 |
| Heart and chronic kidney disease | I13 |
Blood pressure level category.
| Blood Pressure Category | Systolic (mmHg) | Diastolic (mmHg) |
|---|---|---|
| Prehypertension | 120–139 | 80–89 |
| Stage 1 | 140–159 | 90–99 |
| Stage 2 | 160 or higher | 100 higher |
Action descriptions.
| Type | No. | Medication |
|---|---|---|
| Monotherapy | 1 | ARB |
| 2 | CCB | |
| 3 | ACEi | |
| 4 | D | |
| Dual therapy | 5 | ARB + CCB |
| 6 | CCB + D | |
| 7 | ACEi + CCB | |
| 8 | ARB + D | |
| 9 | ACEi + D | |
| 10 | ACEi + ARB | |
| Triple-therapy | 11 | ARB + CCB + D |
| 12 | ACEi + CCB + D | |
| 13 | ACEi + ARB + CCB | |
| 14 | ACEi + ARB + D |
Figure 1Distribution of actions in database.
Reward value descriptions.
| Notations | Descriptions | Decrement Values |
|---|---|---|
|
| Utility decrement value | 0:0 |
|
| Utility decrement value | [0, 55):0.08 |
|
| Utility decrement value associated to hypertension period | [1, 4):0.078 |
|
| Utility decrement value | Prehypertension: 0.034 |
|
| Utility decrement value | [0 ,18.5):0.028 |
|
| Cost of medication | It varies depends |
Figure 2Distributions of recommended medications by model.
Figure 3The trend of medication recommendations by each state component.
Concordance rate between model’s recommendation and doctor’s prescriptions.
| Gender | No. of Matched States | Concordance Rate |
|---|---|---|
| Male | 92 | 85.18% |
| Female | 88 | 81.48% |
MPR of male patients.
| Mono Therapy | Dual Therapy | Triple Therapy | |
|---|---|---|---|
| Min | 34% | 27% | 25% |
| Max | 85% | 76% | 78% |
| Mean | 67% | 61% | 63% |
MPR of female patients.
| Mono Therapy | Dual Therapy | Triple Therapy | |
|---|---|---|---|
| Min | 37% | 31% | 29% |
| Max | 88% | 79% | 81% |
| Mean | 71% | 68% | 66% |
Figure 4Relationship between patients’ model concordance rate and complication occurrence for (a) male patients and (b) female patients.
Figure 5Relationship between patients’ model concordance rate and blood pressure level for (a) male patients and (b) female patients.
Concordance rate of Q-learning and MDP between model’s recommendation and doctor’s prescriptions.
| Gender | Q-Learning | MDP |
|---|---|---|
| Male | 85.18% | 78.7% |
| Female | 81.48% | 75.93% |
Figure 6Relationship between patients’ model concordance rate and blood pressure level of Q-learning and MDP for (a) male patients and (b) female patients.