Unless there is good reason not to, always cc r-help, which I have done here.
Bert Gunter On Tue, Dec 15, 2020 at 1:16 AM Lingling Wen <wenlingling...@gmail.com> wrote: > Dear Bert Gunter, > Good day, > Thank you for your comments about the posting policy. I am sorry for > bothering you with the text against the posting policy in this list. I will > read the policy carefully and improve it in my future posting. > Regarding the question I asked, actually, it is for my experiment data > analysis but not homework. I've tried code as followed: > library(dplyr) > library(tidyverse) > library(rstatix) > library(ggpubr) > test <- read.csv(file.choose(), header=TRUE) > print(test) > > mydata <- test %>% > pivot_longer( > cols = c(3:8), > names_to = "Metabolites", > values_to = "Relative content", > values_drop_na = FALSE) > > mydata > stat <- group_by(mydata, Metabolites,Treatment) %>% > t_test('Relative content' ~ Treatment) %>% > adjust_pvalue(method = "BH") %>% > add_significance() > > When I run the code, it always shows error like this: Error in > terms.formula(formula) : invalid term in model formula. > Because I have a lot of metabolic data to deal with, I think R will help > to save a lot of time so I am learning to use it. But I could not figure > out what's the problem when it gives error feedback. > > It would be very appreciated if I could get help from the list. > Thank you! > > Lingling > > > > > On Mon, 14 Dec 2020 at 01:19, Bert Gunter <bgunter.4...@gmail.com> wrote: > >> 1. Please read and follow the posting guide linked below. >> 2. No html -- this is a plain text list. >> 3. Use ?dput to provide us your data so that we don't have to convert it >> for you. >> 4. We expect you to first make an effort to do your own coding. See >> ?t.test, which you could also >> have found yourself by a web search (rseek.org is a reasonable place to >> search from for R-related stuff, >> though I have usually found that a plain google search does the job). >> 5. Is this homework? -- this list has a no homework policy (see the >> posting guide). >> >> Bert Gunter >> >> "The trouble with having an open mind is that people keep coming along >> and sticking things into it." >> -- Opus (aka Berkeley Breathed in his "Bloom County" comic strip ) >> >> >> On Sun, Dec 13, 2020 at 2:33 PM Lingling Wen <wenlingling...@gmail.com> >> wrote: >> >>> Dear R users, >>> I would like to ask for help with the code of multiple t-test. I have a >>> dataset as followed: >>> Species Treatment var1 var2 var2 var4 var5 var6 >>> Blue D 0.022620093 0.125079631 0.04522571 0.010105835 0.013418019 >>> 1.455646741 >>> Blue D 0.02117295 0.073544277 0.0311234 0.008742305 0.03261776 >>> 0.982196898 >>> Blue D 0.021896521 0.112681274 0.05664344 0.013512548 0.032380618 >>> 1.777003683 >>> Green D 0.032749726 0.087705198 0.13699174 0.009902168 0.083534492 >>> 1.553758965 >>> Green D 0.036468693 0.115829755 0.10941521 0.012139481 0.206929915 >>> 2.610557732 >>> Green D 0.043594022 0.062832712 0.12232853 0.015045559 0.111687593 >>> 1.99552401 >>> Orange D 0.022617656 0.11465489 0.02882994 0.013304181 0.018175693 >>> 1.72075866 >>> Orange D 0.026211773 0.099294867 0.03387876 0.013408254 0.02971197 >>> 2.184955376 >>> Orange D 0.032205662 0.057267709 0.03883165 0.007744362 0.026553323 >>> 1.27255601 >>> White D 0.041135469 0.085531343 0.06921425 0.011496168 0.010196895 >>> 0.573205411 >>> White D 0.045142458 0.111429194 0.03546278 0.009196729 0.009968818 >>> 0.748529991 >>> White D 0.031471913 0.050175149 0.05233851 0.011447205 0.010424973 >>> 0.92385457 >>> Blue W 0.022222296 0.112334911 0.04080824 0.016064488 0.031047157 >>> 0.885523847 >>> Blue W 0.040238733 0.121941307 0.04239768 0.010310538 0.020106944 >>> 0.751643349 >>> Blue W 0.031508947 0.131547704 0.05212774 0.015720985 0.013932284 >>> 0.881234886 >>> Green W 0.021070032 0.121018603 0.38202466 0.022152283 0.038479532 >>> 0.662605036 >>> Green W 0.026562365 0.108269047 0.44028708 0.019344875 0.090798566 >>> 0.746330971 >>> Green W 0.02926478 0.084080729 0.32376224 0.012609717 0.097744041 >>> 0.969301308 >>> Orange W 0.02456562 0.134535891 0.09135624 0.007701481 0.017310058 >>> 0.966322354 >>> Orange W 0.032095541 0.149347595 0.06048885 0.010332579 0.017457175 >>> 0.561561725 >>> Orange W 0.039120696 0.141941743 0.02962146 0.005889924 0.017162941 >>> 0.502529091 >>> White W 0.033903057 0.061460583 0.0492955 0.012457767 0.029929334 >>> 0.70986421 >>> White W 0.033630233 0.115782233 0.02675399 0.021391535 0.023774961 >>> 1.176680075 >>> White W 0.030638581 0.065074112 0.03678494 0.014781912 0.03529703 >>> 0.805500558 >>> I wanted to perform a t-test between the treatment "D" and "W" of each >>> species for all of the variables (var1, var2,...). Could anyone suggest >>> the packages or code for this analysis? >>> >>> [[alternative HTML version deleted]] >>> >>> ______________________________________________ >>> R-help@r-project.org mailing list -- To UNSUBSCRIBE and more, see >>> https://stat.ethz.ch/mailman/listinfo/r-help >>> PLEASE do read the posting guide >>> http://www.R-project.org/posting-guide.html >>> and provide commented, minimal, self-contained, reproducible code. >>> >> [[alternative HTML version deleted]] ______________________________________________ R-help@r-project.org mailing list -- To UNSUBSCRIBE and more, see https://stat.ethz.ch/mailman/listinfo/r-help PLEASE do read the posting guide http://www.R-project.org/posting-guide.html and provide commented, minimal, self-contained, reproducible code.