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# healthcare_analysis.py
import pandas as pd
import numpy as np
from typing import Dict, List, Any, Optional, Tuple
import logging

logging.basicConfig(level=logging.INFO)
logger = logging.getLogger(__name__)

class HealthcareAnalyzer:
    def __init__(self, data_registry):
        self.data_registry = data_registry
        self.analysis_results = {}
    
    def comprehensive_analysis(self, scenario_text: str) -> Dict[str, Any]:
        """Perform comprehensive healthcare scenario analysis"""
        logger.info("Starting comprehensive healthcare analysis")
        
        # Extract tasks and requirements
        tasks = self._extract_tasks(scenario_text)
        requirements = self._extract_requirements(scenario_text)
        
        # Identify relevant datasets
        relevant_data = self._identify_relevant_data(scenario_text)
        
        # Perform analyses based on tasks
        results = {}
        
        if "facility_distribution" in tasks:
            results["facility_distribution"] = self.analyze_facility_distribution(relevant_data)
        
        if "capacity_analysis" in tasks:
            results["capacity_analysis"] = self.analyze_capacity(relevant_data)
        
        if "resource_allocation" in tasks:
            results["resource_allocation"] = self.analyze_resource_allocation(relevant_data)
        
        if "trends" in tasks:
            results["trends"] = self.analyze_trends(relevant_data)
        
        # Generate recommendations
        results["recommendations"] = self.generate_recommendations(results, requirements)
        
        # Future integration opportunities
        results["future_integration"] = self.identify_integration_opportunities(results)
        
        logger.info("Comprehensive analysis completed")
        return results
    
    def _extract_tasks(self, scenario_text: str) -> List[str]:
        """Extract specific tasks from scenario text"""
        tasks = []
        task_keywords = {
            "facility_distribution": ["facility", "distribution", "location", "sites"],
            "capacity_analysis": ["capacity", "beds", "occupancy", "utilization"],
            "resource_allocation": ["resource", "allocation", "staffing", "equipment"],
            "trends": ["trend", "change", "growth", "decline", "pattern"]
        }
        
        for task_type, keywords in task_keywords.items():
            if any(kw in scenario_text.lower() for kw in keywords):
                tasks.append(task_type)
        
        return tasks
    
    def _extract_requirements(self, scenario_text: str) -> Dict[str, Any]:
        """Extract specific requirements from scenario text"""
        return {
            "geographic_scope": self._extract_geographic_scope(scenario_text),
            "time_period": self._extract_time_period(scenario_text),
            "facility_types": self._extract_facility_types(scenario_text),
            "metrics_needed": self._extract_metrics(scenario_text)
        }
    
    def analyze_facility_distribution(self, relevant_data: List[str]) -> Dict[str, Any]:
        """Enhanced facility distribution analysis"""
        results = {}
        
        for data_name in relevant_data:
            df = self.data_registry.get(data_name)
            if df is None:
                continue
                
            # Geographic distribution
            geo_col = self._find_column(df, ['province', 'state', 'region', 'zone'])
            if geo_col:
                geo_dist = df[geo_col].value_counts().to_dict()
                results["geographic_distribution"] = geo_dist
                
                # Calculate Gini coefficient for inequality
                gini = self._calculate_gini(list(geo_dist.values()))
                results["geographic_inequality"] = gini
            
            # Facility type distribution
            type_col = self._find_column(df, ['type', 'category', 'facility_type'])
            if type_col:
                type_dist = df[type_col].value_counts().to_dict()
                results["facility_type_distribution"] = type_dist
                
                # Calculate diversity index
                diversity = self._calculate_diversity_index(type_dist)
                results["facility_diversity"] = diversity
            
            # Urban vs rural distribution
            urban_col = self._find_column(df, ['urban', 'rural', 'location_type'])
            if urban_col:
                urban_rural = df[urban_col].value_counts().to_dict()
                results["urban_rural_distribution"] = urban_rural
        
        return results
    
    def analyze_capacity(self, relevant_data: List[str]) -> Dict[str, Any]:
        """Enhanced capacity analysis"""
        results = {}
        
        for data_name in relevant_data:
            df = self.data_registry.get(data_name)
            if df is None:
                continue
                
            # Current capacity
            capacity_col = self._find_column(df, ['capacity', 'beds', 'current_capacity'])
            if capacity_col:
                total_capacity = df[capacity_col].sum()
                results["total_capacity"] = total_capacity
                
                # Capacity by facility type
                type_col = self._find_column(df, ['type', 'facility_type'])
                if type_col:
                    capacity_by_type = df.groupby(type_col)[capacity_col].sum().to_dict()
                    results["capacity_by_type"] = capacity_by_type
                
                # Capacity utilization
                utilization_col = self._find_column(df, ['utilization', 'occupancy', 'occupancy_rate'])
                if utilization_col:
                    avg_utilization = df[utilization_col].mean()
                    results["average_utilization"] = avg_utilization
                    
                    # Utilization by facility type
                    if type_col:
                        utilization_by_type = df.groupby(type_col)[utilization_col].mean().to_dict()
                        results["utilization_by_type"] = utilization_by_type
                
                # Capacity trends
                time_cols = [col for col in df.columns if any(year in col.lower() for year in ['2020', '2021', '2022', '2023', '2024'])]
                if len(time_cols) >= 2:
                    trend_data = {}
                    for col in time_cols:
                        trend_data[col] = df[col].sum()
                    results["capacity_trends"] = trend_data
                    
                    # Calculate growth rate
                    if len(time_cols) >= 2:
                        latest = time_cols[-1]
                        earliest = time_cols[0]
                        growth_rate = (trend_data[latest] - trend_data[earliest]) / trend_data[earliest] * 100
                        results["capacity_growth_rate"] = growth_rate
        
        return results
    
    def analyze_resource_allocation(self, relevant_data: List[str]) -> Dict[str, Any]:
        """Analyze resource allocation patterns"""
        results = {}
        
        for data_name in relevant_data:
            df = self.data_registry.get(data_name)
            if df is None:
                continue
                
            # Staff analysis
            staff_col = self._find_column(df, ['staff', 'employees', 'fte'])
            if staff_col:
                total_staff = df[staff_col].sum()
                results["total_staff"] = total_staff
                
                # Staff per bed ratio
                capacity_col = self._find_column(df, ['capacity', 'beds'])
                if capacity_col:
                    df['staff_per_bed'] = df[staff_col] / df[capacity_col]
                    avg_staff_per_bed = df['staff_per_bed'].mean()
                    results["staff_per_bed_ratio"] = avg_staff_per_bed
            
            # Equipment analysis
            equipment_cols = [col for col in df.columns if 'equipment' in col.lower()]
            if equipment_cols:
                equipment_summary = {}
                for col in equipment_cols:
                    equipment_summary[col] = df[col].sum()
                results["equipment_summary"] = equipment_summary
        
        return results
    
    def analyze_trends(self, relevant_data: List[str]) -> Dict[str, Any]:
        """Analyze trends in healthcare data"""
        results = {}
        
        for data_name in relevant_data:
            df = self.data_registry.get(data_name)
            if df is None:
                continue
                
            # Find time-based columns
            time_cols = [col for col in df.columns if any(year in col.lower() for year in ['2020', '2021', '2022', '2023', '2024'])]
            
            if len(time_cols) >= 2:
                trends = {}
                
                # Calculate year-over-year changes
                for i in range(1, len(time_cols)):
                    prev_year = time_cols[i-1]
                    curr_year = time_cols[i]
                    
                    prev_total = df[prev_year].sum()
                    curr_total = df[curr_year].sum()
                    
                    if prev_total > 0:
                        change_pct = (curr_total - prev_total) / prev_total * 100
                        trends[f"{prev_year}_to_{curr_year}"] = {
                            "absolute_change": curr_total - prev_total,
                            "percentage_change": change_pct
                        }
                
                results["year_over_year_trends"] = trends
        
        return results
    
    def generate_recommendations(self, analysis_results: Dict[str, Any], requirements: Dict[str, Any]) -> List[Dict[str, str]]:
        """Generate data-driven operational recommendations"""
        recommendations = []
        
        # Capacity-related recommendations
        if "capacity_analysis" in analysis_results:
            capacity = analysis_results["capacity_analysis"]
            
            # Low utilization recommendations
            if "average_utilization" in capacity and capacity["average_utilization"] < 0.7:
                recommendations.append({
                    "title": "Optimize Underutilized Capacity",
                    "description": f"Average utilization is {capacity['average_utilization']:.1%}. Consider repurposing underutilized facilities or consolidating services.",
                    "priority": "Medium",
                    "data_source": "Capacity utilization analysis"
                })
            
            # Capacity growth recommendations
            if "capacity_growth_rate" in capacity and capacity["capacity_growth_rate"] < 2:
                recommendations.append({
                    "title": "Expand Capacity Strategically",
                    "description": f"Capacity growth rate is only {capacity['capacity_growth_rate']:.1f}%. Invest in new facilities or expand existing ones to meet demand.",
                    "priority": "High",
                    "data_source": "Capacity trend analysis"
                })
        
        # Geographic distribution recommendations
        if "facility_distribution" in analysis_results:
            dist = analysis_results["facility_distribution"]
            
            if "geographic_inequality" in dist and dist["geographic_inequality"] > 0.4:
                recommendations.append({
                    "title": "Address Geographic Inequity",
                    "description": f"High geographic inequality (Gini: {dist['geographic_inequality']:.2f}). Consider targeted investments in underserved areas.",
                    "priority": "High",
                    "data_source": "Geographic distribution analysis"
                })
        
        # Resource allocation recommendations
        if "resource_allocation" in analysis_results:
            resources = analysis_results["resource_allocation"]
            
            if "staff_per_bed_ratio" in resources and resources["staff_per_bed_ratio"] < 1.5:
                recommendations.append({
                    "title": "Increase Staffing Levels",
                    "description": f"Staff per bed ratio is {resources['staff_per_bed_ratio']:.2f}, which may be insufficient. Consider hiring additional staff.",
                    "priority": "High",
                    "data_source": "Resource allocation analysis"
                })
        
        # Sort by priority
        priority_order = {"High": 0, "Medium": 1, "Low": 2}
        recommendations.sort(key=lambda x: priority_order.get(x["priority"], 3))
        
        return recommendations
    
    def identify_integration_opportunities(self, analysis_results: Dict[str, Any]) -> Dict[str, Any]:
        """Identify opportunities for AI integration and data enhancement"""
        opportunities = {
            "data_integration": [],
            "ai_applications": [],
            "enhanced_metrics": []
        }
        
        # Data integration opportunities
        opportunities["data_integration"].append({
            "opportunity": "Integrate real-time occupancy data",
            "description": "Combine current facility data with real-time occupancy monitoring systems",
            "benefit": "Enable dynamic resource allocation and surge planning"
        })
        
        opportunities["data_integration"].append({
            "opportunity": "Incorporate demographic data",
            "description": "Add population demographics and health needs data",
            "benefit": "Improve demand forecasting and service planning"
        })
        
        # AI application opportunities
        opportunities["ai_applications"].append({
            "opportunity": "Predictive capacity modeling",
            "description": "Use ML to forecast capacity needs based on trends and external factors",
            "benefit": "Proactive resource planning and reduced wait times"
        })
        
        opportunities["ai_applications"].append({
            "opportunity": "Optimization algorithms",
            "description": "Implement AI for staff scheduling and resource allocation",
            "benefit": "Improved efficiency and reduced operational costs"
        })
        
        # Enhanced metrics
        opportunities["enhanced_metrics"].append({
            "metric": "Patient flow efficiency",
            "description": "Measure time from admission to discharge across facilities",
            "benefit": "Identify bottlenecks and improve patient experience"
        })
        
        opportunities["enhanced_metrics"].append({
            "metric": "Resource utilization index",
            "description": "Composite metric combining staff, equipment, and space utilization",
            "benefit": "Holistic view of operational efficiency"
        })
        
        return opportunities
    
    # Helper methods
    def _find_column(self, df, patterns):
        """Find the first column matching any pattern"""
        for col in df.columns:
            if any(pattern.lower() in col.lower() for pattern in patterns):
                return col
        return None
    
    def _calculate_gini(self, values):
        """Calculate Gini coefficient for inequality measurement"""
        values = sorted(values)
        n = len(values)
        index = np.arange(1, n + 1)
        gini = (np.sum((2 * index - n - 1) * values)) / (n * np.sum(values))
        return gini
    
    def _calculate_diversity_index(self, distribution):
        """Calculate Shannon diversity index"""
        total = sum(distribution.values())
        if total == 0:
            return 0
        proportions = [count/total for count in distribution.values()]
        return -sum(p * np.log(p) for p in proportions if p > 0)
    
    def _extract_geographic_scope(self, text):
        """Extract geographic scope from text"""
        # Simple keyword-based extraction
        if "alberta" in text.lower():
            return "Alberta"
        elif "canada" in text.lower():
            return "Canada"
        return "Unknown"
    
    def _extract_time_period(self, text):
        """Extract time period from text"""
        # Look for year patterns
        import re
        years = re.findall(r'\b(20\d{2})\b', text)
        if len(years) >= 2:
            return f"{min(years)}-{max(years)}"
        return "Unknown"
    
    def _extract_facility_types(self, text):
        """Extract facility types from text"""
        types = []
        if "hospital" in text.lower():
            types.append("Hospitals")
        if "nursing" in text.lower() or "long-term" in text.lower():
            types.append("Nursing homes")
        if "clinic" in text.lower():
            types.append("Clinics")
        return types
    
    def _extract_metrics(self, text):
        """Extract required metrics from text"""
        metrics = []
        if "bed" in text.lower():
            metrics.append("Bed capacity")
        if "occupancy" in text.lower():
            metrics.append("Occupancy rates")
        if "staff" in text.lower():
            metrics.append("Staffing levels")
        return metrics
    
    def _identify_relevant_data(self, text):
        """Identify relevant datasets for the scenario"""
        # Use data registry's find_related_datasets method
        keywords = ["facility", "bed", "capacity", "healthcare", "hospital"]
        return [item["name"] for item in self.data_registry.find_related_datasets(keywords)]