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Self Experiments Analysis of Patients’ Causal Diaries
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System Change for Exercise Maintenance in Older Cardiac Patients National Heart and Blood Institute 09/1/2006- 09/1/2009 PI: Shirley Moore RN, PhD Co-PI: Farrokh Alemi, PhD
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Exercise Causes & Constraints “… I realized how many great reasons I had to skip my workout today. First: rain… Second: low quality sleep after a night spent with my 17-pound cat getting tangled in the blinds. How could anyone exercise after a night like that?” Paige Waehner
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Exercise Causes & Constraints “What makes me exercise is that I have to take a shower and the only place I can take a fun shower, with lost of water, is at the gym. My shower at home does not have much water pressure. I have no choice but to go to the gym.” 68 years old woman
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Exercise Causes & Constraints “When I bike, I do not exercise. I commute to work. ” 42 year old man
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Exercise Causes & Constraints People have different reasons People have different reasons –One solution does not fit all People have wrong perceptions People have wrong perceptions –I fail because of my environment –I succeed because of myself
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Exercise Causes & Constraints People have different reasons People have different reasons –One solution does not fit all People have wrong perceptions People have wrong perceptions –I fail because of my environment –I succeed because of myself We cannot succeed, if we do not know why we have failed
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Post-cardiac Exercise Patterns
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Objectives Healt h Sustain exercise post rehab
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Objectives Healt h Sustain exercise post rehab Understand causes of & constraints for exercise
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Objectives Healt h Sustain exercise post rehab Understand causes of & constraints for exercise Conduct self experiments: Maintain diary, analyze data, repeat the process. Gain insight.
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Self Experiments List possible causes/constraints List possible causes/constraints Trace occurrences Trace occurrences Analyze data Analyze data –Small data sets of 10-14 data points
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Example
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Diary Bike to work Shower at gym Rain Sleep early
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14-day Diary DayRain Plan to commute with bike Plan to shower at gym Sleep early Exercise pattern kept 111000 200111 300110 401101 511101 611000 700000 800101 900000 1011011 1100000 1200101 1310101 1401001
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14-day Diary DayRain Plan to commute with bike Plan to shower at gym Sleep early Exercise pattern kept 111000 200111 300110 401101 511101 611000 700000 800101 900000 1011011 1100000 1200101 1310101 1401001 Too little data for most statistical methods of analysis
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Obvious Lessons No variation in outcomes: No variation in outcomes: –No exercise in the entire 2 weeks –Exercise every day No variation in causes: No variation in causes: –Always present cause –Always absent cause
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Causal Analysis 1. Sequence Cause precedes exercise Cause precedes exercise 2. Association When the cause is present, exercise should be likely When the cause is present, exercise should be likely Counter-factual Counter-factual If the cause is absent, and no other causes are present, exercise should be unlikely If the cause is absent, and no other causes are present, exercise should be unlikely
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Methods of Analysis 1. Logistic regression 2. Bayesian networks 3. Causal analysis
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Method 1: Logistic Regression
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Method 2: Bayesian Network Markov blanket Markov blanket Use of conditional probabilities Use of conditional probabilities –Serial conditional independence –Common cause –Common effect
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Method 3: Causal Analysis 1-Counterfactual Conditional
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14-day Diary with No Constraints Day Plan to commute with bike Plan to shower at gymSleep early Exercise pattern kept 10000 20111 30110 41101 50101 60000 70000 80101 90000 100011 110000 120101 130101 141001
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Method 3: Causal Analysis Day Plan to commute with bike Plan to shower at gymSleep early Exercise pattern kept 41101 141001 Exercise Pattern on Days in which Client was Ready to Bike Probability of Success Given the Cause 1-CounterfactualConditional Plan to commute with bike11
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Method 3: Causal Analysis Day Plan to commute with bike Plan to shower at gymSleep early Exercise pattern kept 20111 30110 41101 50101 80101 120101 130101 Exercise on Days in which the Client was Ready to Take Shower at Gym Probability of Success Given the Cause 1-CounterfactualConditional Plan to shower at gym0.800.86
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Method 3: Causal Analysis Probability of Success Given the Cause 1-CounterfactualConditional Plan to commute with bike 11 Plan to shower at gym 0.800.86 Sleep early0.500.67 Probability of Success Associated with Different Causes
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Method 3: Causal Analysis
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Study Phase I Which of the methods is most accurate? Which of the methods is most accurate? Which method is easier to understand? Which method is easier to understand? Which method is easier to use? Which method is easier to use?
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Questions & Comments
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