Intention to Treat

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  • Опубликовано: 11 июл 2024
  • Please evaluate at: www.surveyshare.com/s/AYAEEHA
    In this episode we look at what our options are when there are non-compliance in a study. Intention to treat, as treated and per protocol are compared.

Комментарии • 91

  • @cyberderma6991
    @cyberderma6991 4 года назад

    This was SIMPLY the best explanation ever. Thank you.

  • @xDomglmao
    @xDomglmao 7 лет назад +2

    Amazing, much better than in our textbooks!

  • @roomanaseher2844
    @roomanaseher2844 Год назад +8

    Can you please make more videos on clinical trials concepts? Your explanation is super simple and comprehensive.

  • @rubymittal4004
    @rubymittal4004 6 лет назад +2

    Thanks! A wonderful video. Even though I knew how to calculate ITT, I was struggling to understand its relevance. Much clearer now. :)

  • @pharmboy1987
    @pharmboy1987 3 года назад

    Thank you so much! Your video explained the exact concepts I was having a hard time comprehending.

  • @meowmeowoglu8484
    @meowmeowoglu8484 5 лет назад +3

    I rarely comment on youtube, but I really felt obligated to comment on this one. Thank you for this great video.

  • @witch_hazel3217
    @witch_hazel3217 4 года назад

    REALLY helped with my paper, wonderfully explained and well illustrated! thank you!

  • @JohnSmith-py8sv
    @JohnSmith-py8sv 5 лет назад

    You’re the best. God bless you

  • @yznnof430
    @yznnof430 8 лет назад +13

    very good and straightforward

  • @brfive
    @brfive 7 лет назад

    Thank you for the video. Very intuitive and easy to understand. Awsome.

  • @heyyyyitsLisa10
    @heyyyyitsLisa10 4 года назад

    This is the best explanation. Thank you!

  • @noha1878
    @noha1878 8 лет назад +7

    Amazing explanation, many thanks :)

  • @salmantariq5794
    @salmantariq5794 8 лет назад +1

    Thank you for the fantastic and concise explanation :D

  • @elisamansur3411
    @elisamansur3411 4 года назад

    Such a good explanation. Thank you!

  • @elizabethfrey8717
    @elizabethfrey8717 5 лет назад

    OMG Thank you for an explanation that makes sense!!!

  • @marianatividadseisdedos1926
    @marianatividadseisdedos1926 4 года назад +1

    Excellent explanation! Could you do a video about "concealment" of the randomisation sequence? Many people mistake the concepts of "concealing" and "blinding". Thank you!

  • @festivetoe9492
    @festivetoe9492 5 лет назад +1

    you earned a sub. I fkn suck at research and you just explained this so simple and well. Thank you so much.

  • @jussa101
    @jussa101 7 лет назад +1

    your videos have saved me during critical appraisal. Our prof never did a great job of explaining this stuff thank-you.

    • @richardfeinman6581
      @richardfeinman6581 3 года назад

      Your prof may have been too smart to figure out how to explain a concept that doesn't make any sense. As above: Simple: If you assign the group to take a pill and you know that none of them took it and you have their data from their return visit, ITT says that that data gives you information about the efficacy of the pill. That's what ITT says you must do.

  • @lujain5048
    @lujain5048 5 месяцев назад

    Best ever !! Thank you

  • @roomanaseher2844
    @roomanaseher2844 Год назад

    Extremely helpful. thankyou so much!

  • @shaomai3608
    @shaomai3608 2 года назад +1

    Thank you for making a video to illustrate the concept. I still have a question. One quit from a study, according to the intention to treat principle, we keep the subject at the group that he was assigned. But when we conduct the statistical analysis, how do we calculate the time the subject spend in the study? Person-time or whole time?

  • @allenwang7961
    @allenwang7961 5 лет назад

    thank you so much, way better than Uworld explanation. They should hire you mate!

  • @strongallalong89
    @strongallalong89 2 года назад

    This was great! Thank you!

  • @AA-im3pz
    @AA-im3pz 2 года назад

    Perfectly explained. thank you :)

  • @spintius3752
    @spintius3752 Год назад

    Excellent explanation. Thanks!

  • @user-fu5gi1nf1m
    @user-fu5gi1nf1m 2 года назад

    this video is crystal clear! it would be better it explains why ITT minimizes bias

  • @kyf_
    @kyf_ 3 года назад

    thank you so much man...

  • @mishaelm224
    @mishaelm224 Год назад

    Thank you

  • @albertocamelli4437
    @albertocamelli4437 2 года назад

    eccezionale!! forza italia!!

  • @paulafrengul9761
    @paulafrengul9761 6 лет назад

    Very well explained thank you

  • @yashpatel2523
    @yashpatel2523 Год назад

    Very good and clear explanation

  • @atheer9632
    @atheer9632 6 лет назад

    Thank You

  • @forriwaj
    @forriwaj 3 года назад

    Got it. Thank you

  • @johnrizk4614
    @johnrizk4614 5 лет назад

    Amazing!

  • @sapirdov5005
    @sapirdov5005 8 лет назад

    great!! helped me a lot !

  • @srishtikumar8348
    @srishtikumar8348 5 лет назад +1

    4:26 In the as-treated protocol, will not the percentage of good outcomes in the control group become 60%? Since I am moving the good outcome from the experimental group into the control group, thereby making the good outcome into a bad one?

  • @mohamedabuelazm9997
    @mohamedabuelazm9997 3 года назад

    Great video

  • @dragonartstudios
    @dragonartstudios 2 года назад

    LMAO I needed to clarify this concept and that was great but Im giving you a million likes because of the joke at the beginning XD XD XD now I cant think of ITT the same way ever :D

  • @maradonaxl2
    @maradonaxl2 3 года назад

    excelletn video, very helpfull. Thanks!

  • @sagarboss2004
    @sagarboss2004 2 года назад

    Amazing

  • @zhengzhuoli7573
    @zhengzhuoli7573 3 года назад

    clear and helps a lot

  • @magiceggyeggy4755
    @magiceggyeggy4755 6 лет назад

    I finally get it!!! Thank you so much!!

  • @syedzahidali6617
    @syedzahidali6617 3 года назад

    Excellent

  • @enasbahar5491
    @enasbahar5491 6 лет назад

    fab!!!!!!!!!!!

  • @Danika93
    @Danika93 7 лет назад +1

    Great channel and video, I have recommended it to my classmates as it helps a lot when reading and understanding RCTs. May I please use a screenshot from 3:50 and/or 4:50 in my thesis ? References will naturally be to this video and its credits :)

    • @sketchyebm3043
      @sketchyebm3043  7 лет назад +2

      Thanks for the message - yes, please go ahead and use it as you see fit as long as proper credit is given. :)

  • @samilyton8899
    @samilyton8899 2 года назад

    would this be the same as concept to treat?

  • @genuine_meteen9169
    @genuine_meteen9169 Год назад +1

    👉Y was it in per protocol, just 75% instead 100%, and the experimental group get 100%, wen it was the experimental group affected and 1 fall out from experimental group happened? Pls explain

  • @Surgeryexplainedsimple
    @Surgeryexplainedsimple 6 лет назад

    excellent

  • @steverichards7060
    @steverichards7060 3 года назад +1

    So no matter what deviations we have, randomisation purpose is preserved. Is that the summary?

    • @sketchyebm3043
      @sketchyebm3043  3 года назад

      That's how I understand it - it minimizes the unavoidable impact of non-compliance by preserving randomization.

  • @iamgoddard
    @iamgoddard Год назад

    Great video! But why an intention-to-treat group is better than a per-protocol group in minimizing biases of protocol-violating subjects is asserted but not explained. On its face, the opposite would seem more likely.
    If half of the controls used the treatment and half of the treatment group didn't use the treatment, any efficacy of the treatment should be undetectable in the intention-to-treat groups but could be uncovered in the per-protocol group. No?

  • @nirnaya13
    @nirnaya13 6 лет назад +6

    Great! But what does "good outcome" mean?

    • @ismatkaakar7535
      @ismatkaakar7535 4 года назад +1

      Nirnaya Bhatta, it’s the desired effects of an intervention. E.g. recovery from an illness, relief of pain, ...

  • @wuyanming1851
    @wuyanming1851 4 года назад

    Very well-explained video, thanks a lot :-)

  • @tophersuwita
    @tophersuwita Год назад

    I am still confused how if we don't know the "satisfaction" (the outcome in this video) of the dropped out subjects? In this video, you explain like the researchers know about the dropped out subjects outcome. For example, 100 subjects in control group vs 100 subjects in experimental group are followed for survival after 5 years. If there are 10 dropped out subjects in experimental group and (for the sake of simplicity) the rest of them is alive, how should we calculate the survival rate of experimental group?
    PP analysis: 90/90 = 100%
    ITT analysis: 90/100?
    And how about if I study their mortality rate?
    PP analysis: 0/90 = 0%
    ITT analysis: 10/100 = 10% (we count the dropped out subjects as "failure") or 0/100 (because we only include the dropped out as they were randomized, without any outcome)?
    Thank you

    • @sketchyebm3043
      @sketchyebm3043  Год назад

      You've asked an excellent question. ITT helps with non-compliance and directs us as what to do with the data that is generated with non-compliance. My examples illustrate how, depending on their data, ITT minimizes (but does not eliminate) the impact of non-compliance. Missing data is another problem altogether, which is a disaster because it really undermines the validity of the research. For this reason we often put (arbitrary) limits on how much data can go missing before we forfeit the results of the study. I hope this helps!

  • @nathanhorton2613
    @nathanhorton2613 2 года назад

    You try to give the video more brightness it will be great if you do

  • @mahaqas1135
    @mahaqas1135 6 лет назад

    That Canadian accent thoughhh

  • @jan-kjetiljess503
    @jan-kjetiljess503 4 года назад +1

    Would't it make more sense to take the mean value of per protocol, as treated and ITT? That way you account for all possibilities and in the long run probably get more correct interpretation of data. Or at least my grasp says you do...

    • @sketchyebm3043
      @sketchyebm3043  4 года назад +2

      A really excellent question that I hadn't thought of before! We see a similar issue arise with meta-analysis in that we don't improve the quality of an estimate by increasing the number of inaccurate data going into the calculation. I think the old adage "Garbage in, garbage out'" probably applies here too. It points to just how terrible non-compliance in a study is on the final result... so frustrating to have to rely on ITT which (IMHO) is the worst method except for all the others (to misquote Churchill).

    • @jan-kjetiljess503
      @jan-kjetiljess503 4 года назад +1

      @@sketchyebm3043 Thanks for that response. I agree with the 'garbage in, garbage out' adage, but in this case we don't really know which is and which is not garbage. We don't know whether ITT, per protocol or as treated most accurately reflects the (majority of) drop outs. As I see it, ITT is a gamble which'll sometimes be right and other times wrong. To me it just seems more conservative and in the long term more failsafe to do a mean value. I might do both myself. One mean and one ITT. Let the reader choose. (Can I have an 'amen' for passing the buck?).

    • @stephenogbodo1328
      @stephenogbodo1328 Год назад

      @@jan-kjetiljess503 Amen!

  • @RobertWF42
    @RobertWF42 10 месяцев назад

    Is Intention to Treat becoming a "buzz word" in data science?
    A team in my analytics department at a large insurance company claimed they'd conducted an "ITT" study. After reading their paper, it was clear they had run a case-control analysis on observed data, not an ITT RCT.
    Maybe "Intent to Treat" sounds fancier?

    • @sketchyebm3043
      @sketchyebm3043  10 месяцев назад

      Sorry to hear - hopefully it's not becoming a buzz word! In medical research it does imply sticking to a certain methodology.

  • @shyamgupta2668
    @shyamgupta2668 2 года назад

    how do you do that?

    • @sketchyebm3043
      @sketchyebm3043  2 года назад

      I use VideoScribe for the whiteboard and iMovie for audio and editing. Takes some time to learn, but pretty user-friendly!

  • @shameenoori4193
    @shameenoori4193 7 лет назад

    wow sooo good finally I understood thank you soooo much

  • @mohammedabusalem4211
    @mohammedabusalem4211 Год назад

    genius

  • @stiglarsen543
    @stiglarsen543 3 года назад

    dident halp :(

  • @Kordon87
    @Kordon87 2 года назад +1

    BASED BASED BASED REEEEEEE

  • @Mercyforthewicked
    @Mercyforthewicked 2 года назад

    but how do i now they used the ITT method??

    • @sketchyebm3043
      @sketchyebm3043  2 года назад +1

      They should specify in their "methods" section that they are using intention to treat analysis. It's on my list of things I go looking for!

    • @Mercyforthewicked
      @Mercyforthewicked 2 года назад

      @@sketchyebm3043 ahh i see! Thank you for responding !
      If it's not stated should it be obvious in their analysis methods ? Or is it generally just stated

    • @sketchyebm3043
      @sketchyebm3043  2 года назад +1

      @@Mercyforthewicked Often it's just stated (or they'll say they used another technique) but sometimes not and then I go looking to see if they talk about what they did with patients who were non-compliant or didn't conform to the research methodology. Very tricky!

    • @Mercyforthewicked
      @Mercyforthewicked 2 года назад

      @@sketchyebm3043 Is missing outome data a red flag for ITT analyses, or is it unrelated to the ITT

    • @sketchyebm3043
      @sketchyebm3043  2 года назад

      @@Mercyforthewicked I think it's somewhat related, but its own problem. Missing data undermines the validity of the results much like non-adherence to study protocol. There's no way to 'fix' those problems, but rather to adjust our expectations of our conclusions.

  • @richardfeinman6581
    @richardfeinman6581 7 лет назад

    I have explained what is wrong with this in my intention-to-publish paper. I know, if I didn't write it, what am I talking about? If you can believe that you learn about the experimental even though you know that one of the people dropped out, then you can appreciate how substantial my CV is.
    The "best" is what he says. Never mind that it doesn't make any sense. If you knew that one of the people would not adhere for religious, political, psychological reasons, you would no include them in the trial. If you include them now, you are introducing bias, that is you are saying that what you wanted to do was more important than what happened.

    • @sketchyebm3043
      @sketchyebm3043  7 лет назад +2

      Thank you for your comment Dr. Feinman. I'm sure we can agree that research participants who do not adhere to protocol present a threat to the validity of the results no matter what, mathematically, we do with their results. In the case of predictable non-adherence, I agree that having this as an exclusion criteria PRIOR to randomization is a better idea than letting them enter the study only to fail compliance. Having said that, the generalizability of the results will suffer with each additional group we exclude from the study.
      I have a few issues with your publication on ITT. (nutritionandmetabolism.biomedcentral.com/articles/10.1186/1743-7075-6-1)
      Specifically:
      a) A physician concluding that Diet A is equal to Diet B based on a failed superiority trial is a common error we see with clinicians, which is misinterpreting 'no significant difference found' to mean 'there is no difference'. The former being a conclusion from a failed superiority trial, the latter from a successful equivalence/non-inferiority trial. This common clinician misunderstanding is important in of itself, and would have been better off left as a separate teaching point, as opposed to muddling the application of ITT.
      b) The example of the CABS trial - the problem with just using as-treated post-randomization is that the reason for patients' non-compliance may be independently related to their outcome. (Perhaps the high mortality in the group who was assigned to surgery but got medicine was because these were the sickest patients in this arm of the study and someone felt they were not a good surgical candidate. Using as-treated or per-protocol would then selectively remove the sickest patients from this arm of the trial, resulting in worse bias than what we see with ITT.)
      c) Your comment that it is "reasonable" that scientific knowledge ignore "data that was not in the experiment" is itself based on opinion and not fact. Although it is easy mathematically to just use per-protocol or as-treated analysis, these methods likely enhance the bias from non-compliance.
      d) I agree that concepts or ideas are not better because they are newer. I would add that concepts or ideas are not better because they are established. As a friend says: "Be skeptical of anything you learn."
      Like the much quoted "Democracy is the worst form of government, except for all the others", it is my thought that ITT is the worst way to deal with non-adherence, except for all the others. Which is not to say that ITT fixes non-adherence.
      Glad you are drawing your own conclusions!
      Anthony

  • @taro7448
    @taro7448 2 года назад

    Anyone from NBME self assessment?

  • @SmileStash77
    @SmileStash77 3 года назад

    Ooooout

  • @alvarotaveras7751
    @alvarotaveras7751 11 месяцев назад

    nbme 20 hahaha

  • @evisweet
    @evisweet 4 года назад +1

    Your explanations are good but you are too fast.

  • @mikem8810
    @mikem8810 5 лет назад

    Thank you

  • @minhtran-qh2xe
    @minhtran-qh2xe 2 года назад

    You try to give the video more brightness it will be great if you do

  • @bobbobb7212
    @bobbobb7212 2 года назад

    how do you do that?

    • @sketchyebm3043
      @sketchyebm3043  2 года назад

      I use VideoScribe for the whiteboard and iMovie for audio and editing. Takes some time to learn, but pretty user-friendly!

  • @alaaabozied3054
    @alaaabozied3054 4 года назад

    Thank you