One of the best overall reviews was by Faude several years ago which I recommend reading. They reviewed the literature extensively and found:
A total of 25 different LT concepts were located. All concepts were dividedIn addition they recognized the distinction between gas exchange thresholds and lactate (as discussed in a previous post):
into three categories. Several authors use fixed bLa during incremental
exercise to assess endurance performance (category 1). Other LT concepts
aim at detecting the first rise in bLa above baseline levels (category 2). The
third category consists of threshold concepts that aim at detecting either the
MLSS or a rapid/distinct change in the inclination of the blood lactate curve
It has to be emphasized that this text focusesDifferences in test design:
on LTs only. Although a close link between lactate
and gas exchange markers has often been
proposed,[21,31,33-36] there is still controversial
debate with regard to the underlying physiological
Depending on the length of ramp, prior exercise and carbohydrate availability, lactate results can differ.
It is of note that the specific GXT protocol canTest interpretation and curve fitting
vary considerably with regard to starting and
subsequent work rates, work rate increments and
stage duration. A recent review focused on the
influence of varying test protocols on markers
usually used in the diagnosis of endurance performance.[
47] For instance, varying stage duration
or work rate increments may lead to relevant
differences in blood lactate curves and LTs.
This is a huge issue which initially confused me. For some parameters (like a fixed lactate of 4 as a cutoff) there is minimal interpretation, however several other techniques rely upon mathematical modeling. Most importantly, the initial rise in lactate at lower work loads may not be obvious due to the inherent error in the assay (strip error):
In addition, there has been great debate on theIn addition, the method of measurement may introduce variation of values:
best fitting procedure for the obtained bLa data
set. For instance, a single- or double-phase
model using two or three linear regression
segments, a double-log model, a third-order
polynomial or an exponential function have
been used in previous studies. Up to now, no
generally accepted fitting procedure has been
established. Thus, it seems appropriate that
test design as well as data fitting procedures
should be chosen (and reported) as has been
originally described for a certain LT
From a methodological point of view, the siteDefinition of the first transition
(earlobe, fingertip) as well as the method (venous,
arterial, capillary) of blood sampling[56,57] and
the laboratory methods (lactate analyser, analysed
blood medium)[58-60] may also affect the test
result. Samples taken from the earlobe have uniformly
been shown to result in lower bLa than
samples taken from the fingertip
At lower work loads there is a gradual rise in lactate that has been called the anaerobic threshold. Some consider this a misnomer and refer to it as the aerobic threshold. This intensity would be a valuable metric to know since many consider it to be the upper limit of zone 1 training, the zone that endurance athletes should be spending the bulk of their sessions in.
This model consists of two typical breakpoints
that are passed during incremental exercise. In
the low intensity range, there is an intensity at
which bLa begin to rise above baseline levels.
This intensity was originally determined using gas
exchange measurements,[21,22] and Wasserman
called it the ‘anaerobic threshold’. This term has
since been used for various LTs, particularly those
with a different physiological background,[33,75]
and, thus, has caused considerable confusion.
Kindermann et al. and Skinner and McLellan[
34] suggested this intensity be called the
‘aerobic threshold’ (LTAer), because it marks the
upper limit of a nearly exclusive aerobic metabolism
and allows exercise lasting for hours. This
intensity might be suitable for enhancing cardiorespiratory
fitness in recreational sports, for
cardiac rehabilitation in patients or for lowintensity
and regenerative training sessions in
high level endurance athletes
Definition of the second transition:
Above the point of initial lactate rise, a situation occurs where higher work loads induce more lactate accumulation. Up to a certain point, lactate disposal can keep pace with increased production, but past the "Maximal lactate steady state" power, levels can not maintain equilibrium:
Exercise intensities only slightly above the
LTAer result in elevated but constant bLa during
steady-state exercise and can be maintained for
prolonged periods of time (~4 hours at intensities
in the range of the first increase in bLa[82-84] and
45–60 minutes at an intensity corresponding to
the maximal lactate steady state [MLSS][85,86]).
Although anaerobic glycolysis is enhanced, it is
speculated that such intensities may induce a
considerable increase in the oxidative metabolism
of muscle cells.[30,87] Theoretically, a high stimulation
of oxidative metabolism for as long a period
of time as is possible in this intensity range
might be an appropriate load for endurance
training. The highest constant workload that still
leads to an equilibrium between lactate production
and lactate elimination represents the MLSS.
Some authors suggested that this intensity be
called the ‘anaerobic threshold’.
In addition, since the MLSS can only be sustained for so long, indexes like the FTP or critical power have been used as approximate surrogates. I will not get into the nit picking that exists in the literature on which is a "better" parameter.
Clearly, some individuals can withstand higher lactate levels than others making a fixed cutoff problematic. Some prior posts have discussed non invasive methods to approximate MLSS. If a more exact determination is needed, more lengthy sessions are necessary but will introduce (perhaps undesired) training stress.
The gold standard for the determination of the
MLSS is performing several constant load trials
of at least 30 minutes’ duration on different days
at various exercise intensities (in the range of
50–90% VO2max, An increase
in bLa of not more than 1 mmol/L between
10 and 30 minutes during the constant load trials
appears to be the most reasonable procedure for
The confusion around various lactate threshold definitions and concepts:
Obtaining the work load associated with the "aerobic" threshold has been discussed by numerous authors. Here is an extract from Faude's review:
Table I shows an overview of LT concepts that
could be categorized as the first rise in bLa above
baseline levels (LTAer). Several researchers described
the procedure to determine this threshold
with terms like ‘‘the first significant/marked/
systematic/non-linear/sharp/abrupt sustained increase
in bLa above baseline’’.[30,110,126-133,138]
Although the visual determination of the first rise
of bLa above baseline levels seems obvious and
simple, in practice it is associated with considerable
problems because of the only slight changes
in bLa on the first steps during GXTs. Yeh
et al. demonstrated that the visual detection
of the LTAer (in that study called ‘anaerobic
threshold’) led to relevant differences between
observers. Therefore, it does not seem appropriate
to determine this threshold by simple visual
- They definitely emphasize that visual inspection of the lactate curve is not an optimal method to obtain threshold transitions
Here is a table listing the methods for the first threshold :
Again, the take home lesson here is the comment about not being able to use visual methods to get that first transition point. Mathematical modeling seems the most objective approach.
The second transition:
Although a fixed lactate of 4 can be used a cutoff, it seems more complicated than this:
It was soon recognized that a fixedAnd:
bLa does not take into account considerable
interindividual differences and that LT4 may frequently
underestimate (particularly in anaerobically
trained subjects) or overestimate (in
aerobically trained athletes) real endurance capacity.[
88,96,97,146] Therefore, several so-called ‘individualized’
LT concepts were developed. For
instance, Keul et al. and Simon et al. determined
the individual anaerobic threshold (IAT)
at a certain inclination of the lactate curve (tangent
of 51 and 45 , respectively). However, it
seems questionable whether the use of a fixed inclination
may reflect individual lactate kinetics
better than a fixed bLa
Bunc et al. determined the LTAn as the intersectionIn other words, multiple methods exist to calculate the second transition. The analytic methods will be reviewed shortly.
between the exponential regression of the lactate
curve and the bisector of the tangents on the upper
and lower parts of the regression. A comparable
model was established by Cheng et al. and
called the Dmax method. Those authors determined
the maximal perpendicular distance of the
lactate curve from the line connecting the start
with the endpoint of the lactate curve. It is obvious
that these threshold models are dependent
on the start intensity as well as the maximal effort
spent by the subjects. To eliminate the influence
of the start point of the GXT, Bishop et al.
connected the LTAer with the endpoint of the
lactate curve and observed that this modified
Dmax threshold (Dmod) was also highly correlated
with performance during a 1-hour time trial in 24
Cautions on using LT4 (lactate of 4 cutoff) as MLSS
Although some studies have shown reasonable correlation with a lactate cutoff of 4 with the MLSS, stage duration should be 5 minutes (or more) and even so the correspondence is not absolute:
Most researchers analyzed the relationship of
LT4 with MLSS.[49,72,90,92,112,117] For instance,
Heck and colleagues[49,50,72] found strong correlations
between LT4 and MLSS during running
as well as during cycling exercise. However, the
fitness level of their subjects was quite heterogeneous
and, therefore, the high correlations to
some extent might be spurious. Additionally,
they observed that the velocity at LT4 was higher
than MLSS velocity when stage duration during
the GXT was 3 minutes, whereas this was not
the case with 5-minute stages. Therefore, these
authors concluded that LT4 gives a valuable
estimate of the MLSS when stage duration is
at least 5 minutes. Also, Jones and Doust
found a high correlation between LT4 and the
MLSS in a homogenous group of trained runners
with LT4 being higher than MLSS (3-minute
stages). Lower correlations were found by
van Schuylenbergh et al. in elite cyclists as
well as by Beneke in a homogenous group
of rowers. Also, LT4 and MLSS did not differ
significantly with 6-minute stages, whereas
LT4 was considerably higher than MLSS with
3-minute stages. Lajoie et al. evaluated
whether the intensity corresponding to 4 mmol/L
lactate during a GXT with 8-minute stages and
30W increments is appropriate to estimate the
MLSS in nine cyclists. Average power output at
MLSS and LT4 was not significantly different.
Reproducibility and correlation with performance:
A recent study looked at the multiple methods of lactate value interpretation with a graded exercise test (25w every 5 min) compared to a climb up Mt Ventoux as well as a 2 simulated time trials.
Here are their definitions of the methods that will be used to calculate the anaerobic threshold:
LT1. Similar to what Tanaka described  we plotted bLa (mmol/L) versus power (W). Three authors (JH, WdMK and PG) were asked to independently select the first point in the BLC that marks a substantial increase above resting level. LT1 was defined as the power value corresponding to the point selected by at least two researchers, or in cases without consensus,
the three researchers discussed until consensus was reached.
LT2. Coyle et al.  determined LT as 1 mmol/L above a visually determined baseline in the BLC. We took the lactate measurement chosen as LT1 and calculated the mean of the measurements
preceding this point to create an average baseline value. The power value belonging to the first measured lactate value after baseline that supersedes the baseline value plus 1 mmol/L was considered LT2.
LT3. As Dickhuth et al.,  we determined the minimum lactate equivalent (the lowest value when bLa is divided by work intensity) using third-order polynomial fitting and added 1.5 mmol/L to the corresponding bLa, termed individual anaerobic threshold in the paper, to find the power value on the fitted polynomial of the BLC and termed it LT3.
LT4. As described by Amann et al.,  we calculated the first rise of 1 mmol/L or more between two bLa measurements where the next rise was similar or larger than 1 mmol/L. Themeasurement that preceded this first increase was considered LT4.
LT5. Based on the method described by Dickhuth et al.,  we divided bLa (mmol/L) by the 30 second average VO2 (mL/min/kg) and plotted it against power. These values were interpolated with a third-order polynomial and the power value at the lowest point in this curve was considered LT5.
LT-4mmol. A widely used concept is the LT-4mmol method, as described for example by Sjodin et al.  The power in the interpolated third-order polynomial BLC that corresponds to a bLa of 4 mmol/L was considered LT-4mmol.
Dmax and Dmax modified. Similar to the method proposed by Cheng et al.,  we plotted bLa versus power, interpolated with a third-order polynomial and plotted a line from the first measurement to the last measurement. The point in the interpolated BLC that has the maximum perpendicular distance with that line was considered Dmax. A modified version as described by Bishop et al.,  uses the measurement that precedes an increase of at least 0.4mmol/L instead of the first bLa measurement to draw the line to the last measurement, which is termed Dmax modified (Dmax-mod).The results showed wide differences in results:
Here are the performance comparisons to the times trials and race up Mt Ventoux:
They also reviewed literature comparing the various computation methods with performance:
In this study we compared eight different representative LT concepts on the same large cycling performance dataset to evaluate repeatability and predictive properties. All concepts showed high repeatability, and correlated with endurance performance. However, LT3, LT- 4mmol, Dmax and Dmax-mod showed the best repeatability, and had the highest correlation
with time trial performance. As correlation with performance was consistently high for Dmax and Dmax-mod, also with the uphill road race, the latter performing slightly better on each criterion, and because Dmax-mod was previously shown to be a valid estimate of MLSS, we
would recommend using Dmax-mod when analyzing the blood lactate curve.
Time for a recap:
- The definition of the first and second lactate thresholds (aerobic and anaerobic) are somewhat controversial.
- A progressive ramp test is generally done to obtain lactate levels at each power range.
- Each stage of the test should be 5 minutes (or more).
- The first threshold is helpful in determining the upper limit of the easy training zone.
- The second breakpoint is useful as an index of future performance, maximal pace as well as intense training zone commencement.
- Both LT 4 mmol. Dmax and modified Dmax give reasonable time trial performance prediction as well as estimation of MLSS for a given individual. No, they are not the same as a true MLSS. However, since it takes repeated 30 minute sessions to obtain a more exact MLSS, the shorter, less intense methods are more practical.
How to generate the multiple lactate parameters from a table of power vs lactate?
About 10 years ago, Newell and colleages wrote a paper, not only reviewing the different methodologies in lactate concepts, but providing free public domain software allowing one to graph out each particular method. By entering in the values of lactate at each level of the power (or speed) done during a ramp stage, mathematically derived threshold results are objectively calculated along with a curve plot. Since criticism of a hand drawn threshold curve is voiced in the literature, I was particularly intrigued by this approach. In addition, for the non math oriented folks doing these tests (me), the guess work for doing log-log or Dmax calculations is taken away. I would like to review the paper and offer some tips in using the template created in "R" by Higgins and Newell.
Note - After writing up the tips for R below, Dr Newell informed me that there is web based app that will do this. You do not need R or any software libraries. Here is the screen you will be greeted with to enter your data:
The authors review and define the algorithms as follows:
Traditionally, the lactate threshold was determined
subjectively from plots of the lactate concentration
versus work rate by visually identifying the treadmill
velocity or work rate that best corresponds to a
departure from a linear baseline pattern. Lundberg,
Hughson, Weisiger, Jones, and Swanson (1986)
proposed fitting a linear spline where the lactate
threshold is the estimated work rate corresponding to
the location of the knot (i.e. the point of intersection
between the two linear splines). The location of the
knot and the parameters of the lines are estimated by
minimizing the sum of the squared differences
between the observed lactate values and the fitted
The value of the lactate threshold can be estimated
using simple linear regression by fitting model and identifying the work rate LT corresponding to the model with minimum mean squared error.
A log transformation of both the work rate and
blood lactate concentration has been suggested
(LTloglog) in an attempt to gain a better estimate of
the lactate threshold (Beaver et al., 1985).
- What they are saying here is that the first threshold (LT1) can be estimated by either a log-log plot or a variation of linear regression and they will provide results for both.
- Both parameters are potential markers for the first initial lactate threshold (aerobic), the work load at which lactate just starts to rise past baseline.
Fixed blood lactate concentration (FBLC) or the OBLA
This marker is the work rate corresponding to a fixed
blood lactate concentration, typically 4 mmol
(Heck et al., 1985; Kindermann et al., 1979). It is
calculated using inverse prediction by finding the
work rate w (in model 2.2) corresponding to a lactate
value equal to the FBLC
- This is a conventional marker, well established in literature, estimated by the software.
Fixed rise post baseline (FRPB)
This marker (Thoden, 1991) corresponds to a
work rate preceding an increase in lactate concentration
of a fixed rise post baseline (e.g.
1 mmol from baseline). Let Lbaseline represent
the lactate reading at baseline. The FRPB marker
is calculated by finding the work rate w corresponding
to a selected rise from baseline (e.g.1 mmol )
- Another commonly used marker, the work rate at which lactate rises 1 mmol above baseline.
This marker corresponds to the work rate correspondingAt first glance this sounds confusing but a picture illustrates the concept:
to the point that yields the maximum
perpendicular from a line L2, joining the first and last
lactate measurements to the estimated lactate curve
L3 (Cheng et al., 1992).
- I have drawn the perpendicular lines over to the lactate curve which yield both Dmax and Dmax mod. Clearly, this is not something that can be done by easy hand calculation or visual inspection.
This marker (Newell et al., 2005, 2006) represents
the work rate corresponding to the point of
maximum acceleration of the estimated underlying
lactate curve (i.e. the maximum of the second
derivative of the lactate curve).
It should be noted that the D2LMaxDiscrete will
always correspond to a work rate where data were
- Yet another proposed idea, one of maximum acceleration. This is not Dmax mod from the above figure but somewhat similar in theory.
This is what the software will yield when power and the corresponding lactate levels are known (from the paper by Newell):
Tips for plotting your own results:
So how do we get our results to graph out like the above? One should read the tutorial but here are a few tips.
Download and install R 2.3.1 - do not use the newer versions (they won't work, it seems the pspline library is not compatible). Install the windows .exe file to install R.
Go to this page and download "lactatemarkers.zip"
Unzip the file to the root C drive.
This is what it will look like:
Follow the directions in the tutorial:
Although at this point, you could run the default entered power/lactate values, let's put our own numbers in.
For my particular lactate study, I used 5 minute ramp intervals, temporarily getting off the bike and testing fingertip lactate about 90 sec after the stage. After a 10 minute warmup, I started at about 135 watts and went to just over 260. For a potentially more accurate look, higher power/lactate values can be added.
Now we are simply going to change the "samplerunner.txt" and put our values in
The first column should not be changed ("1" "2" and so on). The second column is power or speed, the third column is lactate:
Save the file and go back to R.
Paste in "sample.runner<-read.table('C:\\Lactatemarkers\\samplerunner.txt', header=TRUE)"
and hit return
Paste in "sample.runner" and hit return.
Paste in "Lactate.markers(sample.runner)" and hit return:
You will get the following:
There are ways to get both multiple samples and historical results to be plotted as well (If the tutorial is studied further).
A unique feature though, is an objective look at the first LT plus the log-log relation, giving us an estimate if that first lactate threshold. For me it is about 200 watts, which fits with where I fail the talk test.
I would like to personally thank the authors for this handy tool and hope it is used more often.
Why the focus on knowing where the "easy zone" training limit is?
Although this has been discussed before, most if not all coaches and sports professionals emphasize the creation and maintenance of a huge "aerobic base". This generally revolves around some form of polarized training with the vast bulk of the time spent in the "easy zone". A paper looking at this topic just came out I wanted to briefly discuss the findings.
The study evaluated the real world running performance of a group of elite subjects. Performance score was best correlated with the total volume of easy run training.
The study group:
Eighty-five male elite- and international-standard long-distance
runners took part. The age range was between 18 and 43 years,
with a mean age of 28 years (65). All subjects were specialists in
the 5,000, 10,000 m, half-marathon (21.195 km), or marathon
(42.195 km) events
The relevant training activities includedWhat was found:
were cross-training, flexibility training, weight training, work
with the coach, easy runs, tempo runs, long-interval training,
short-interval training, and competition and time trials (9,41).
For each of the latter 5 activities, subjects were further instructed
to account for total weekly distance (km). The latter 4 activities
(i.e., not including easy runs) were the activities that subjects
considered more important and, for this study, were considered
DP. This consideration was taken because the same subjects of
this study rated these activities with high values (mean superior to
7 in a 10-point Likert-type scale) and significantly higher than 5
on the scale for relevance, physical and mental effort, and enjoyment in 2 previous studies. Easy runs were considered mentally effortless because its
rating was not significantly higher than 5 on the Likert scale for
The best predictor to finishing time was the total distance ran during training and in particular the volume of easy runs:
- Short interval training did have a modest correlation, but long interval training had almost no correlation. This seems like yet another piece of evidence supporting polarized training especially keeping the volume of zone 1 (easy runs) quite high.
- One could also speculate that the long interval training took place in zone 2, which is an area of questionable value (as far as stress to benefit ratio).
The study conclusions:
The first important finding that coaches should note was that
the strongest relationships found for performance scores were
with total distance run after 3, 5, and 7 years of systematic
practice. There is thus a fundamental need for athletes to run
over considerable distances (.100 km per week) to compete
with world-class athletes and even with those who are below
this highest standard. It is not possible to always train at high
intensities, particularly over these long distances, so the large
associations found between easy runs and performance scores
are welcome in terms of managing training intensity in long distance
running regimens, notwithstanding their central role
in developing cardiovascular fitness.
- Lactate threshold concepts and nomenclature are variable, sometimes arbitrary and often confusing. The "aerobic threshold" has been labeled as the "anaerobic threshold" and there are multiple definitions for both low and high breakpoints.
- Doing your own lactate test is not difficult. You will need accurate speed or cycling power (treadmill or indoor trainer), a lactate meter and the willingness to stick your finger for blood after each stage.
- The software developed by Newell and Higgins is an ideal tool to objectively calculate the first and second breakpoint equivalents. Agreed on methods such as log-log, Dmax and other curve fitting techniques are automatically done. The web based app makes calculation even simpler.
- When doing the test, use the same bottle of strips, same site of blood, same meter, same ramp intervals, same time from end of stage to blood sample. Uniformity of each stage is key. Therefore, don't do a 5 minute stage on one power interval but a 7 minute interval on another. Don't wait 3 minutes after the stage to test, when you were previously waiting 1 minute etc.
- Although the second breakpoint/threshold is most spoken of (MLSS, OBLA, 4 mmol etc), in my opinion the first threshold is perhaps as or more critical. Since it is an objective marker of the beginning of a more intense work load, it gives one an upper limit for an "easy training zone". As reviewed above, recent studies show that the quantity of easy training was more predictive of future endurance sport success than that of HIT duration. In order to do that volume of easy training, one needs to know up to what power/heart rate limit that ceiling is. I would propose that the upper limit of zone 1 would be just below that of the first lactate threshold.
- Lactate testing and VO2 max by gas exchange Vs Garmin/Firstbeat - my data
- Measurement of Hemoglobin saturation breakpoints - use as a fitness monitoring tool
- Does the FTP relate to the MLSS - Yes, No, Maybe?
- Combining NIRS and DFA a1 for critical intensity estimation
- A new paradigm for Intensity thresholds - combining surrogate markers
- Ramp slope and HRV thresholds