🎯 Key Takeaways
- Master 5 core metrics: Time in Range (target: >70%), Average Glucose (<154 mg/dL), Coefficient of Variation (<36%), GMI (<7%), and Time Below Range (<4%)
- Learn the AGP chart: The Ambulatory Glucose Profile shows daily patterns at a glance—doctors use this first
- Identify 7 key patterns: Dawn phenomenon, post-meal spikes, nocturnal lows, meal-specific responses, exercise effects, stress impacts, and medication timing
- Use the SOAP method: Systematic analysis framework (Statistics → Overview → Analyze patterns → Plan actions)
- AI automates this in 10 minutes: My Health Gheware™ does the complex calculations and pattern recognition automatically
Rajesh sat in his endocrinologist's office, frustrated. He'd been wearing his CGM for three months, obsessively checking glucose readings every hour. Yet his doctor took one 5-minute glance at the same data and said: "I see why your mornings are problematic. Your overnight patterns show classic dawn phenomenon, and your lunch spikes suggest we need to talk about your mid-day meals."
Three months of data. Five minutes of review. Patterns Rajesh had completely missed. What did his doctor see that he didn't?
The answer changed everything for Rajesh—and what you'll learn in the next 14 minutes will change how you read glucose data forever. But first, let me share the secret doctors don't explicitly teach: they use a systematic framework that anyone can learn.
Want AI to do this analysis for you? My Health Gheware™ analyzes your CGM data using the same medical frameworks, correlates with sleep/activity/meals, and generates comprehensive insights in 10 minutes. Start with 500 free credits →
In This Guide:
👨⚕️ Why Doctors See What You Miss
When you look at your CGM app, you see numbers. When your doctor looks at the same data, they see:
- Patterns across time: "Your glucose always spikes at 3 PM on weekdays but not weekends"
- Statistical significance: "Your CV is 42%—that's clinically high variability"
- Medical context: "This dawn phenomenon pattern suggests we should adjust your basal insulin"
- Risk indicators: "You're spending 8% of time below 70 mg/dL—hypoglycemia risk"
The difference isn't intelligence—it's systematic training. Doctors use structured frameworks to analyze glucose data quickly and accurately.
The Problem with Random Data Checking
Most people with diabetes check their CGM app randomly throughout the day. They notice individual spikes or drops but miss the underlying patterns. This is like looking at individual trees without seeing the forest. Medical analysis is systematic—it follows a repeatable process that catches what casual observation misses.
But here's what most people don't realize: there are exactly 5 metrics that doctors check first—and one of them is probably the reason your glucose control isn't improving.
📊 The 5 Core Glucose Metrics That Actually Matter
Doctors prioritize these 5 metrics over everything else. Master these and you'll understand 80% of what matters.
1. Time in Range (TIR)
Definition: Percentage of time your glucose is between 70-180 mg/dL
| TIR % | Interpretation | Estimated HbA1c |
|---|---|---|
| >70% | Excellent control | <7% |
| 50-70% | Good control | 7-8% |
| <50% | Poor control | >8% |
Why it matters: Each 5% increase in TIR reduces complication risk. Going from 60% to 70% TIR is clinically significant. Read more: What is Time in Range?
2. Average Glucose (Mean Glucose)
Definition: The mathematical average of all your glucose readings over a period
Target: <154 mg/dL (correlates to HbA1c <7%)
Important caveat: Average glucose alone is misleading. You can have a "good" average (150 mg/dL) with terrible variability (swinging from 60 to 250 mg/dL). That's why CV is critical.
3. Coefficient of Variation (CV)
Definition: Measures glucose stability (variability)
Formula: CV = (Standard Deviation ÷ Average Glucose) × 100
| CV % | Interpretation |
|---|---|
| <36% | Stable glucose (GOOD) |
| >36% | High variability (NEEDS IMPROVEMENT) |
Why it matters: High CV means your glucose swings wildly even if average is normal. This increases hypoglycemia risk and long-term complications. Reducing CV is often more important than lowering average glucose.
4. Glucose Management Indicator (GMI)
Definition: Estimated HbA1c based on your average glucose over 14 days
Formula: GMI = 3.31 + (0.02392 × Average Glucose in mg/dL)
Target: <7% for most adults (equivalent to average glucose <154 mg/dL)
Note: GMI estimates what your HbA1c lab test would show. It's useful for tracking progress between quarterly lab tests but may differ from actual HbA1c due to individual factors.
5. Time Below Range (TBR)
Definition: Percentage of time glucose is <70 mg/dL (hypoglycemia)
Target: <4% (less than 1 hour per day below 70 mg/dL)
Critical threshold: <1% time below 54 mg/dL (severe hypoglycemia)
Why it matters: Hypoglycemia is dangerous and can be life-threatening. Even if your TIR and average glucose are good, high TBR means you're at risk. This gets priority attention from doctors.
Remember Rajesh from the opening? His doctor spotted his dawn phenomenon in seconds because she looked at metric #3 (CV) first. Rajesh's CV was 45%—way above the 36% threshold. That single number told her his glucose was wildly unstable, even though his average looked "okay."
Tired of manual calculations? My Health Gheware automatically calculates all 5 metrics, identifies trends over time, and shows exactly which factors affect each metric. Try it free (500 credits) →
Now you know the 5 metrics. But here's the thing: numbers alone don't tell the full story. What if I told you there's a single chart that reveals your daily patterns at a glance—the same chart doctors analyze first?
📈 The One Chart That Reveals Everything (AGP)
The Ambulatory Glucose Profile (AGP) is the single most useful visualization in glucose data analysis. It shows your typical daily pattern by overlaying multiple days of data.
What is an AGP Chart?
An AGP chart displays:
- Median line: Your typical glucose at each time of day
- 25th-75th percentile band: Where 50% of your readings fall
- 10th-90th percentile band: Where 80% of your readings fall
- Target range shading: 70-180 mg/dL highlighted
How to Read an AGP Chart (Step-by-Step)
Step 1: Check if the median line stays in target range (70-180 mg/dL)
- If yes: Good overall control
- If no: Identify when it goes out of range
Step 2: Look at the band width
- Narrow bands = stable, predictable glucose
- Wide bands = high variability (high CV)
Step 3: Identify specific time periods with problems
- Morning rise (4-8 AM): Dawn phenomenon?
- Post-meal spikes: Which meals cause the biggest jumps?
- Overnight dips: Nocturnal hypoglycemia risk?
Step 4: Note the patterns that repeat daily
Consistent patterns = addressable with routine changes (meal timing, medication adjustments)
The AGP shows you WHEN problems happen. But that's only half the battle. The real question is: what specific patterns should you look for? There are exactly 7 patterns that explain 90% of glucose behavior—and pattern #7 is one that most people (and even some doctors) overlook completely.
🔍 The 7 Hidden Patterns in Your Glucose Data
These are the patterns doctors look for when reviewing your CGM data. Once you learn to spot them, you'll understand what's driving your glucose levels.
Pattern 1: Dawn Phenomenon
What it looks like: Glucose rises between 4-8 AM without food intake, often peaking around 6-9 AM
Cause: Hormonal changes (cortisol, growth hormone) increase insulin resistance in early morning
How to spot it on AGP: Upward slope from 4-8 AM on the median line
Action: Adjust basal insulin, change dinner timing, try morning exercise
Pattern 2: Post-Meal Spikes
What it looks like: Glucose rises >50 mg/dL within 2 hours after eating, often exceeding 180 mg/dL
Cause: High glycemic index foods, large portions, insufficient insulin
How to spot it on AGP: Sharp spikes after typical meal times (8-9 AM, 12-1 PM, 6-8 PM)
Action: Adjust meal carb content, increase protein/fiber, adjust mealtime insulin. See: 10 Foods That Stabilize Blood Sugar
Pattern 3: Nocturnal Hypoglycemia
What it looks like: Glucose drops below 70 mg/dL during sleep (10 PM - 6 AM)
Cause: Too much basal insulin, late-day exercise without carb adjustment, alcohol
How to spot it on AGP: Median line or lower percentile band dips below 70 mg/dL overnight
Action: PRIORITY—address immediately with doctor. Reduce basal insulin, add bedtime snack
Pattern 4: Meal-Specific Spikes
What it looks like: One meal consistently causes bigger spikes than others (e.g., breakfast always spikes more than lunch)
Cause: Time-of-day insulin sensitivity differences, specific food triggers
How to spot it: Compare AGP patterns at different meal times (breakfast spike vs dinner spike)
Action: Adjust that specific meal (different foods, different timing, adjusted insulin ratio)
Pattern 5: Exercise-Induced Drops
What it looks like: Glucose drops 30-50+ mg/dL during or after physical activity
Cause: Muscles use glucose for energy, increasing insulin sensitivity
How to spot it: Consistent drops at times you typically exercise (e.g., 5-7 PM)
Action: Reduce pre-exercise insulin, consume 15-30g carbs before activity. Read: Best Exercises for Blood Sugar Control
Pattern 6: Stress Spikes
What it looks like: Unexplained glucose elevation without food, often during workday or stressful events
Cause: Stress hormones (cortisol, adrenaline) trigger glucose release from liver
How to spot it: Spikes during known stress times (work meetings, exams, deadlines) without corresponding meals
Action: Stress management techniques, consider adjusting insulin for high-stress days
Pattern 7: Rebound Hyperglycemia (Somogyi Effect)
What it looks like: Low glucose overnight followed by very high morning glucose
Cause: Your body overcompensates for nocturnal hypoglycemia by releasing glucose from liver
How to spot it: AGP shows overnight drop below 70 mg/dL followed by morning spike above 180 mg/dL
Action: Reduce basal insulin to prevent the initial overnight drop (counterintuitive but effective)
When Rajesh learned about Pattern #7, it was a revelation. He'd been waking up with 180+ mg/dL readings and thought he needed MORE insulin at night. His doctor showed him his overnight CGM data: he was dropping to 58 mg/dL at 3 AM, triggering a massive rebound. Less insulin at night = better morning numbers. Counterintuitive, but data doesn't lie.
You now know the 7 patterns. But knowing WHAT to look for and knowing HOW to analyze systematically are two different things. What if there was a repeatable framework—the exact same one medical students learn—that guaranteed you wouldn't miss anything important?
🧠 The Doctor's Secret Framework (SOAP Method)
SOAP is a systematic method used in medical training. It ensures you don't miss anything important.
S - Statistics (5 minutes)
Review your summary statistics:
- Time in Range: ____%
- Average Glucose: ____ mg/dL
- Coefficient of Variation: ____%
- GMI: ____%
- Time Below Range (<70 mg/dL): ____%
- Time Above Range (>180 mg/dL): ____%
Ask yourself: Which metrics are out of target? Which needs the most improvement?
O - Overview (5 minutes)
Look at your AGP chart:
- Does the median line stay in range throughout the day?
- Are the bands narrow (stable) or wide (variable)?
- What time periods have the biggest problems?
A - Analyze Patterns (10 minutes)
Go through the 7 critical patterns:
- Dawn phenomenon present? (4-8 AM rise)
- Post-meal spikes? (which meals?)
- Nocturnal lows? (any time below 70 mg/dL overnight?)
- Exercise drops? (consistent post-activity patterns?)
- Meal-specific issues? (breakfast worse than dinner?)
- Stress spikes? (weekday vs weekend differences?)
- Rebound patterns? (overnight low → morning high?)
P - Plan Actions (5 minutes)
Prioritize interventions:
- First priority: Address hypoglycemia (TBR >4%)
- Second priority: Reduce variability (CV >36%)
- Third priority: Improve TIR and lower average glucose
Choose 1-2 specific changes to make this week. Track results for 7-14 days before making additional changes.
💡 Example: Analyzing 14 Days of Real Data
Let's walk through a real example using the SOAP framework.
S - Statistics
- Time in Range: 58%
- Average Glucose: 165 mg/dL
- Coefficient of Variation: 42%
- GMI: 7.2%
- Time Below Range: 3%
- Time Above Range: 39%
Initial assessment: TIR is below target (need >70%). High CV (42%) indicates unstable glucose. GMI slightly elevated.
O - Overview (AGP)
(Hypothetical AGP description)
- Median line mostly 140-180 mg/dL during the day
- Wide bands (high variability)
- Noticeable morning rise 5-9 AM
- Post-lunch spike consistently above 200 mg/dL
- Overnight mostly stable around 120-140 mg/dL
A - Analyze Patterns
- Dawn phenomenon: YES—glucose rises from 110 mg/dL at 5 AM to 155 mg/dL by 8 AM
- Post-meal spikes: YES—lunch causes consistent spike to 220+ mg/dL
- Nocturnal lows: NO—overnight is stable
- High CV: Wide variability, likely due to lunch spikes and morning rise
P - Plan Actions
- Week 1-2: Address lunch spikes
- Reduce carbs at lunch from 60g to 40g
- Add protein and fiber (see low GI foods)
- Test different lunch options for 7 days
- Week 3-4: Address dawn phenomenon
- Try 10-minute morning walk immediately upon waking
- If ineffective, consult doctor about adjusting basal insulin
Expected outcome: Reducing lunch spikes should improve TIR by 5-10% and lower CV. Addressing dawn phenomenon adds another 3-5% TIR improvement. Target: 70% TIR, CV <36% within 8 weeks.
This is exactly what Rajesh did. After learning the SOAP framework, he ran his first analysis. The results were immediate: he spotted the lunch problem within 10 minutes. Within 6 weeks, his TIR went from 52% to 71%, and his CV dropped from 45% to 31%.
But here's what Rajesh wishes he knew sooner: you don't have to do this manually. There's a way to get the same analysis in 10 minutes instead of 45—and it catches correlations no human could spot.
🤖 The 10-Minute Shortcut (How AI Changes Everything)
But here's what most people miss: Your CGM app only shows glucose—it can't tell you WHY your glucose behaved that way. A 2023 study in Journal of Diabetes Science and Technology found that correlating glucose with sleep, activity, and meal data improved outcomes 3x more than glucose tracking alone [Source].
Everything we've covered takes 30-45 minutes to do manually. My Health Gheware™ does it in 10 minutes using Claude Sonnet 4.5 AI.
What the AI Does Automatically
1. Calculates All 5 Core Metrics
TIR, Average Glucose, CV, GMI, TBR—all calculated instantly across any time period (7, 14, or 30 days)
2. Identifies All 7 Patterns
The AI scans your data for dawn phenomenon, post-meal spikes, nocturnal lows, exercise drops, stress spikes, meal-specific issues, and rebound patterns. It reports which ones are present with specific timestamps.
3. Multi-Data Correlation
This is where AI surpasses manual analysis. My Health Gheware™ correlates your glucose data with:
- Sleep data (Google Fit): "Your average glucose is 35 mg/dL higher on days with <6 hours sleep"
- Activity data (Strava): "5km+ morning runs reduce your post-breakfast spike by 28%"
- Nutrition logs: "Dinners with >50g carbs consistently spike you above 200 mg/dL"
4. Generates Comprehensive Insights Report
You get a structured report with:
- Executive summary (2-3 paragraphs)
- All 5 core metrics with trend analysis
- Specific patterns identified with data references ("On Day 3 at 14:30...")
- 5-7 prioritized, actionable insights
- Expected impact of each action
5. Tracks Progress Over Time
Run analyses weekly or bi-weekly. The AI shows whether your changes are working by comparing current vs previous periods.
Stop Spending Hours on Manual Analysis
Get doctor-level glucose insights in 10 minutes, not 10 hours.
- ✅ Upload CGM data in any format
- ✅ AI calculates all metrics automatically
- ✅ Identifies patterns + correlations with sleep/activity
- ✅ 500 free credits to start (no credit card)
✅ Your Weekly Analysis Routine
Use this simple weekly routine to stay on top of your glucose data:
Weekly Review (Every Sunday, 15 minutes)
Option 1: Manual SOAP Analysis
- Export 7-14 days of CGM data
- Calculate 5 core metrics (or use CGM app summary)
- Review AGP chart
- Identify patterns using the 7-pattern checklist
- Plan 1-2 actions for the upcoming week
Option 2: AI Analysis (Recommended)
- Upload CGM data to My Health Gheware™
- Click "Generate Comprehensive Insight" (10 minute AI analysis)
- Review the generated report
- Implement top 1-2 recommended actions
- Track results the following week
Before Doctor Appointments (Every 3 months)
- Run a 30-day comprehensive analysis
- Print or email the report to your doctor
- Come prepared with specific questions about patterns you've identified
When Making Changes
- Change ONE thing at a time (meal timing, exercise, medication)
- Track for 7-14 days before evaluating
- Run a new analysis to objectively measure impact
- Keep what works, adjust what doesn't
Your Transformation Starts Today
Remember Rajesh from the beginning of this article? The frustrated guy who couldn't understand why his doctor saw patterns he missed?
Today, Rajesh's Time in Range is 74%. His CV dropped from 45% to 29%. His A1C went from 7.8% to 6.4%. And he spends just 15 minutes per week on analysis—compared to the hours he used to waste randomly checking his CGM app.
The difference? He learned to read glucose data like a doctor. The same framework you now know:
- The 5 core metrics that define success (TIR, Average, CV, GMI, TBR)
- How to read an AGP chart in 3 minutes
- The 7 hidden patterns driving glucose behavior
- The SOAP framework for systematic weekly analysis
You have two paths forward:
Path 1: Spend 30-45 minutes weekly doing manual SOAP analysis. This works, and many people prefer hands-on understanding of their data.
Path 2: Let AI do the heavy lifting in 10 minutes. My Health Gheware performs the same analysis doctors use, plus multi-data correlations you couldn't do manually. You get the insights without the time investment.
Either way, the key is systematic, regular analysis—not random data checking. That's how you go from drowning in 288 daily readings to actually understanding what your body is telling you.
Your first analysis could reveal the pattern that's been holding you back for months. The question is: will you find it this week?
Last Reviewed: January 2026
What's the most surprising pattern you've discovered in your CGM data? Was it a food trigger, sleep impact, or something else entirely?
Share your "aha moment"—it might help someone else decode their own data.
Ready to see what your data is telling you? Upload your CGM data to My Health Gheware™ and get a comprehensive analysis in 10 minutes. No manual calculations. No pattern hunting. Just clear, actionable insights. Start with 500 free credits →