Featured

Thirty day challenge – week 4

Summary

This week was the best so far. I did my longest run to date (12km) and had a really good gym week lifting (approx. 20% more volume). My diabetes control is improving (thank you AAPS and exercise) and I have learned a lot digging though my data and through responses from the previous weeks question regarding carb sensitivity factor (CSF) being used to measure insulin sensitivity post exercise. I made some strides in my glucose management tool which also felt great.

BG vs. ISF vs. insulin sensitivity post gym (@11:48:09 – 42min)
BG vs. ISF vs. insulin sensitivity post run (@11:49:30 – 33min)

After gym sensitivity increased to 115% directly post training, while my sensitivity was stable at 78% post my run.

Body Metrics

Body mass vs. body fat
StartWeek 1Week 2Week 3Week 4
Weight (kilograms)75.8747574.173.1
Body fat percentage (according to Samsung)17.3%17.8**
Body fat percentage (according to the navy seal calculator)15%15%14.8%14%
Total volume
Table stating the weekly body metrics I am tracking.

Exercise

Week 1Week 2Week 3Week 4
Distance (kilometres)25.1720.5437.2229.4
Activity (hours)4.343.655.645.4
Table stating the weekly exercise metrics I am tracking

Nutrition

Screenshot of average macro-nutrients consumed during week 4
Screenshot of average macro-nutrients consumed during week 4

Diabetes

Week 1Week 2Week 3Week 4
Low (<3.9) (%)0.90.63.51.6
In Range (3.9-7.8) (%)75.374.771.978.9
High (>= 7.8) (%)23.824.724.619.5
Standard deviation (SD) 1.31.71.71.5
Average (mmol/l)6.87.0 6.7 6.5
A1c estimation (%)5.96.05.85.7
Table stating the weekly diabetic metrics I am tracking.

Ideally I want to see a time-in-range (TIR – 3.9-7.8 mmol/l) exceeding 90% with an average in the low sixes and a standard deviation (SD) around one (1).

Featured

Thirty day challenge – Week 1

Summary

The first week was challenging to say the least. As I have increased my physical activity my insulin needs seem to have fundamentally changed, and this resulted in quite a few lows. I also had some tech issues, my Android phone had an operating system error and my Dexcom sensor wasn’t enjoying the resistance training I was doing as it was inserted in my arm. I reached my activity goals but exceeded my diabetic and nutritional goals.

Body Metrics

StartWeek 1Week 2Week 3Week 4
Weight (kilograms)75.874
Body fat percentage (according to Samsung)17.3%
Body fat percentage (according to the navy seal calculator)15%
Total volume
Table stating the weekly body metrics I am tracking.

Exercise

Week 1Week 2Week 3Week 4
Distance (kilometres)25.17
Activity (hours)6.24
Table stating the weekly exercise metrics I am tracking
Week 1 breakdown

Nutrition

Screenshot of the average and total macronutrients consumed during week 1.
Screenshot of average macronutrient consumed during week 1

Diabetes

Ideally I want to see a time-in-range (TIR – 3.9-7.8 mmol/l) exceeding 90% with an average in the low sixes and a standard deviation (SD) around one (1).

Featured

Thirty day challenge

It’s spring, and after a brief ‘almost two months’ of going off the reservation snacking at all times of day and barely exercising, I decided to check my weight. I discovered I had picked up a few kilograms since my last weigh in. After learning this, I decided that it was time for me to get my life back together and start another 30 day challenge. I find these great to provide the reason to get back into a routine.

I know that setting unrealistic goals (like losing 5kgs) isn’t going to work, so I’m going to break down my plan in to nutrition, exercise and diabetes goals.

Exercise

My plan for the month is to gym three days a week, run a minimum of 2 times per week and to mountain bike at least once a week. (So I guess I lied about setting unrealistic goals 🙂 )

Nutrition

For my meals I plan to stick to my usual low-ish carbohydrate meals during the week and try to only go coo-coo bananas on the late night snacking over the weekend. I’ll start carb-counting again as this will almost always yield the best results. This will be supplemented with 2-3 liters of water, depending on length of cardio that day.

Diabetes

Above is a chart of my starting metrics. Lets see how quickly I can improve those values. Its going to be a little bit of an unfair test as I was not carb-counting during the above period.

We want to see the In range (Time-in-range) increase and the standard deviation decrease. By doing that the average and the A1c should follow. This will mostly be achieved by the diet component of the plan. The exercise component will allow me to eat more cabs and require less insulin, as well as improve circulation, sleep, blood pressure, mood, cholesterol, memory and overall mental and physical health.

I will check in with weekly updates to ensure I keep motivated and accountable.

Omnipod Dash – Summary – Week 1&2

Its only been a week and already I feel so comforted by the barely audible click of the pump depressing the plunger in the mini pump at meal times or sporadically throughout the day. Its the sound of blood sugar control. What a week its been learning all I can about Pod changes and being woken up on day 3 by the Pod alarm alerting me its 8 hours before the Pod expires. Once expired it was interesting to note that the Pod functioned as per normal, apparently for another 8 hours.

I had a Pod on days 3 and 4 that was inserted into my leg that may have had a cannula issue, as I struggled to maintain my standard level of control.

Its been a lot easier to exercise focusing on enjoying the task rather than if I would break the pump or rip out a cannula. Having no wires makes it a lot easier to run or gym as I don’t have to worry about pump placement as much. Previously I needed to ensure I had pants with pockets or a belt clip available.

I have also found sleeping a little easier, as I can barely notice the pump If I roll over onto it.

Flank insertion.
Boost Omnipod – Time in Range (3.9 -7.8 mmol/l)
Boost Omnipod – Time in Range (3.9 – 10 mmol/l)

Unannounced meals

I decided to test the system with unannounced meals consisting of 40g of carbs or less. I am a bit of a control freak when it comes to diabetes so I have been postponing testing this for a long time. The results were outstanding. I will be writing more about this in the future, including any automations I use or test.

Boost Omnipod – UAM – Time in Range (3.9 -7.8 mmol/l)

Boost Omnipod – UAM – Time in Range (3.9 – 10 mmol/l)

Quest Protein Bar T1D Review

Is the Quest protein bar type 1 diabetic friendly? Yes I think it is, read more below to discover why I think it is.

Review

  • Nutritional Information
  • Insulin Strategy
  • Goal
  • Results

When trying anything new I always read the nutritional information on order to determine the impact it will have on my body. Certain high fat foods can cause insulin resistance and inflammation and will delay gastric emptying while protein will digest and get synthesised into carbohydrates.

Below are two great resources you should read before deciding on your final dosing strategy. Its important to note that in Australia, most items don’t have total carbohydrate count that includes fibre and sugar alcohol, which can make it difficult to assess the impact of products that don’t list sugar alcohols in the nutritional information.

Net Carbs Vs. Total Carbs: What Counts?

Insulin Strategy

Based on the nutritional information above, my inulin to carb ratio and my proximity to recent exercise I decided to inject as follows; I didn’t input my eCarbs for the protein as I knew that AAPS would be able to manage. Read my post for injecting for protein and fat if you are not on an AAPS or experience elevated blood glucose two (2) hours after eating.

Goal

The goal of any insulin strategy would be to inject enough insulin at the correct time so that the upward force the carbohydrates exert is counteracted by the downward force the insulin exerts and you stay in range for the duration of the meal.

To analyse this I use three (3) values, standard deviation, time in range (TIR) and Coefficient of the variation. These three (3) values will assist you in determining how good or bad a meal was for you in terms of blood sugar impact (BGI).

Time in Range (TIR): For TIR we are looking for a high percentage of your readings within a normal (I use 3.9-7.8 mmol/l ) range.

Standard Deviation: For standard deviation I look for values under 1 as a meal that has little to no blood glucose impact (BGI).

Coefficient of the variation (CV): Is the standard deviation divided by the average glucose. Its a measure that helps normalise the results by reducing the influence on average glucose. Most studies indicate that anything under 33% is good.

Picture Source: See my CGM. https://seemycgm.com/2017/08/09/why-dia-matters/

Results

As we can see by the table below that this snack consumed with the correct insulin strategy resulted in very stable blood glucose over a number of hours, with little deviation. What should be noted is that the sugar alcohol started to effect readings after 3 hours and that 1 hour prior to consumption I had exercised. The exercise would have increased my insulin sensitivity.

Time in Range (TIR): 100%

Standard Deviation: 0.38

Coefficient of the variation (CV): 0.06

Read my post on some common foods I eat to gain a better understanding of how this meal impacted me in comparison.

Food Information table

The below is a list of foods I commonly eat that I decided to analyse. I have listed some lower-carb high protein meals, snacks and a few higher-carb meals. These are all more regular meals so I have had the opportunity to adjust my insulin strategy to better cover the various aspects of the meal.

Equipment/ Software: Dexcom G6, Android APS, Medtronic 522, OrangeLink Pro, Nightscout, Python, Excel

Part of my strategy is to adjust the insulin timing (pre-bolus), starting BG (using temp targets or exercise) and the amounts of insulin used. The amount of insulin used needs to be adjusted based on the macronutrient composition, the amount of fibre and the amount of sugar alcohol in your meal. Sugar alcohols are often not listed on food labels in Australis and those foods should be avoided. Read my post on injecting for protein and fat for a better understanding of how your insulin dose will need to be adjusted to compensate for protein and fat.

To analyse a meal I use three (3) values, standard deviation, time in range (TIR) and Coefficient of the variation. These three (3) values will assist you in determining how good or bad a meal was for you in terms of blood sugar impact (BGI). You can also use the difference between the 3 hour and 5 hour standard deviations to ascertain if you are covering gluconeogenesis correctly.

Time in Range (TIR): For TIR we are looking for a high percentage of your readings within a normal (I use 3.9-7.8 mmol/l ) range.

Standard Deviation: For standard deviation I look for values under 1 as a meal that has little to no blood glucose impact (BGI).

Coefficient of the variation (CV): Is the standard deviation divided by the average glucose. Its a measure that helps normalise the results by reducing the influence on average glucose. Most studies indicate that anything under 33% is good. The lower the number the better the outcome.

Injecting for Protein and Fat with an Artificial Pancreas System (APS)

13th Feb 2022 (updated 18th October 2022 to include unannounced meals)

In recent years scientists have discovered that carbohydrates are not the only macronutrient that has an effect blood sugar. In fact there are more and more medical studies exploring the effects of the other macronutrients (fat and protein) on blood sugar, and the complications they pose to blood sugar control. In the post below I provide my understanding and explore how I inject for protein and fats using an artificial pancreas system (APS).

Science / Background

One of the more interesting reads on the subject is a medical study entitled “The Role of Dietary Protein and Fat in Glycaemic Control in Type 1 Diabetes: Implications for Intensive Diabetes Management”. In the study they explore the effect of fats and protein on blood sugar management. I have summarised some of the more interesting elements below;

  • Fat itself doesn’t get converted through gluconeogenesis into carbohydrates, but glycerol from the hydrolysis of TAGs can be metabolised to pyruvate and makes up between 5-15% of the weigh of TAGs, so only part of the TAGs would be converted into glucose.
  • Fat does have an impact on gastric emptying, slowing the process down by delaying and reducing glycaemic and insulinemic responses.
  • Meal protein influences hormones such as cortisol, growth hormone, IGF-1 and ghrelin. These changes impact insulin resistance and increase insulin requirements.
  • 90% of the amino acids found in protein are converted into glucose through gluconeogenesis and will increase blood glucose.

How do I inject for the effects of fat and protein?

There are currently a few different methods to deal with the effects of protein and fat on blood glucose, I will outline the one I mostly use, but if you are on multiple daily injections (MDI) I strongly suggest reading Dr. Bernstein’s diabetes solution for an approach using regular insulin. All of these approaches require some experimenting on your part.

Loop / Android APS

Depending on the macronutrient profile, I shift my approach appropriately. I generally eat low-carb high protein meals as these meals are more easily managed by an APS or covered by MDI. For these types of meals I use the formula eCarbs (extended carbs) = (Protein *25%) + (Fat *10%). I then add an absorption time of around 5-6 hours, unless the fats are above 40g, then I would increase the absorption time to 7-8 hours to counter the delayed gastric emptying caused from the increased fat content.

eCarbs (extended carbs) = (Protein *25%) + (Fat *10%)

Example of a meal calculation

If the fat content is more than 60g, I prefer to add 30% to the total carb count and then split the dose 60/40 (this amount will vary on the protein content and your body’s ability to digest the food) . This can either be done by scheduling the second dose or by using an extended bolus.

Its often a hit and miss process. So I keep detailed notes to help me repeat the process should I guess correctly and want to eat that meal again. Otherwise its used as a variable and adjusted the next time I eat that meal.

Unannounced meals (UAM) – Android APS / OpenAPS

Another mechanism of managing high protein, moderate fat meals is though an Android APS / OpenAPS function called unannounced meals (UAM). This is extremely low input (All you need to do is not add carbs to AAPS). This requires you to manage your expectations somewhat in terms of how much fat AAPS can manage without user intervention, but moderate fat high protein meals can be managed with minor deviations and no user intervention as can be seen in the example below and is a complete game changer in terms of quality of life.

Goal

The goal of any meal as far as I am concerned is to keep your readings within a normal blood sugar range for the entire duration of the meal, whilst minimising any sudden spikes in blood sugar, essentially mimicking a working pancreas. To analyse this I use two values, standard deviation and time in range (TIR). These two (2) values will assist you in determining how good or bad a meal was for you in terms of blood sugar impact.

Time in Range (TIR): For TIR we are looking for a high percentage of your readings within a normal (I use 3.9-7.8 mmol/l ) range.

Standard Deviation: For standard deviation I look for values under 1 as a meal that has little to no blood glucose impact (BGI).

Coefficient of the variation (CV): Is the standard deviation divided by the average glucose. Its a measure that helps normalise the results by reducing the influence on average glucose. Most studies indicate that anything under 33% is good.

Here are my top 5 meals in terms of standard deviation (SD) and time-in-range (TIR).

You will notice that all the meals are low-carb high protein meals. My blood sugar hardly deviated in the first 3 hours of eating and then had a slight bump during the absorption of proteins later. This can be seen by observing the differences in the three (3) and five (5) hour standard deviation values. The first set of standard deviations being lower represent blood sugars that are close to the each other in number and not changing much, then they start getting a litter larger as blood sugars rise (so the SD gets higher) as the proteins digest in the last 2 hours.

Example of Android APS (UAM) counteracting the absorption of proteins and fats


An export of the device status for the 4 hours post meal consumption.

In the graph above we can see sugars (grey) steadily rise and peak (8.2 mmol/l) at around the two (2) hour mark due to protein digestion (gluconeogenesis). By the four (4) hour mark the system has infused an additional 3.2 units of insulin through super micro boluses (SMBs) and temporary basal adjustments to bring sugars down to a comfortable, but not perfect 6.2 mmol/l. This was completely managed by AAPS with no intervention by myself. Using additional functionality in AAPS we could provide insulin more quickly using automations and profile switches to further reduce the impact of protein. If we use the Loop eCarb formula previously stated, then insulin required for fat and protein equates to 3.3 units.

Meal NameInsulinCarbsProteinFatStart BG BGEnd BGAverage 2 hoursAverage 4 hoursTime in Range 2 hours (3.9-7.8)Time in Range 4 hours (3.9-7.8)
Lunch2 units @ meal start18.4g62g41g5.8 mmol/l6.2 mmol/l6.69 mmol/l6.87 mmol/l85.1%88.6%
Table providing results from UAM during lunch..
Daily graph exported from Nightscout.

As you can see from the Nightscout graph, no carbs have been entered into AAPS and results have been outstanding.

Example of Loop counteracting the absorption of proteins and fats

In the picture below we can see how Loop manages gluconeogenesis (eCarbs or extended carbs) from a low-carb high protein meal I ate.

At the top of the Loop user interface (UI) (the yellow arrow) we can see that Loop is issuing a 2.3U temporary basal (temp basal) almost three hours after I injected for the meal. This temp basal is to counter the absorption of the fats and proteins. These temp basals’ are issued and adjusted multiple times during the course of the meal digestion timeframe.

In the Insulin delivery section of the Loop UI (the red arrow) we can see Loop delivering insulin in the form a temp basal. It takes multiple hours for the protein to be synthesised into glucose and so a temporary basal can easily manages the resultant rise in blood sugar from gluconeogenesis.

In the Active carbohydrates section of the Loop UI (the blue arrow) we can see that there are still 14g of unabsorbed carbohydrates that Loop will manage with temporary basals’.

The picture below is from the ICE (Insulin Carbohydrate Effect) chart displaying a graphical representation of the predicted vs observed blood glucose effects that insulin and carbohydrates have on the body.

A graphical view of the absorption process.

Meal examples

Here are a few examples of meals I eat, not all are low-carb meals, but all meals are under 50g of carbs.

https://wordpress.com/post/t1daaps.wordpress.com/446

Day 42 – Loop – Micro-boluses – Free APS

A few days ago I enabled micro-boluses in Free APS and its been working remarkably well at managing any post prandial blood sugars highs. I have only setup a 45% partial bolus being administered when deemed necessary, but at this stage I feel its performing as I want it to. I still count carbs and administer ‘fake’ or ‘extended’ carbs and simply use the micro-boluses as a tool to quickly administer insulin in place of an extended high temporary basal, which would do the job a little more slowly. Tonight I test this on Chinese food. 🙂

In the chart below we can see that I ate a hearty dinner, and then decided to eat some raisin toast. I managed to stay in range almost the entire evening after all these carbs. Amazing. I would never have even considered doing this before Loop, and if I did I would have anxiety the entire time.

UPDATE: The night went well and overall I am very happy with the results. If I am honest though, I think my expectation in the beginning of this experiment was that Loop would autonomously manage my blood sugar with very little input from myself, but I have realised and this is not the case, and adapted my management to include pre-emptive blood sugar correction. I am certain that Loop would indeed make these decisions, but keeping my finger on the pulse allows me to obtain the level of blood sugar control I am after.

Time-in-range (TIR) = >3.9 AND < 7.8mmol/l

The goal: Eat Chinese food and stay in range

The strategy: I went onto MyFitnessPal and found honey chicken, pork pieces and mixed veg. I added them into the dinner section and calculated the insulin required for the carbohydrate, protein and fat macros. I was not sold on the bolus amount for the carbs and ended up only injecting 70% of the calculated amount, but Loop quickly started administering micro-boluses to correct this. The ‘fake carbs’ ( I don’t really know why this name has gained so much traction in the diabetic community, since proteins and fats end up being synthesised into glucose (carbs) through gluconeogenesis, and are thus sugars (real carbs) being generated by the body at a slower rate than the exogenous carbs we eat) for protein and fat were then added to Loop with a 4.5 hour digestion period. This will allow Loop to attribute blood sugar changes to carbs (from gluconeogenesis) for up to 6 hours, and be able to micro-bolus or increase basal for them.

The outcome: I noticed that after an hour I had a substantial amount of insulin on-board and my blood glucose (BG) was dropping at a rate that could not be sustained by the food I had eaten, so I ate another 20g of faster acting carbs. An hour after that I had a mild hypo (3.7 mmol/l) and ended up eating again to correct this. I believe a better strategy may have been to inject 60% of the bolus up-front and then monitor for an hour before injecting the remaining bolus. Then again, this may have been just a carb-counting error on my part.