2017-07-06 73 views
2

我有一个数据帧称为input,看起来像下面这样:的R - 回收NA值以前的非NA值

structure(list(sequence = c("LdBPK_010012800.1", "MAQNDKIAPQDQDSF", 
"AQNDKIAPQDQDSFL", "QNDKIAPQDQDSFLD", "NDKIAPQDQDSFLDD", "DKIAPQDQDSFLDDQ", 
"KIAPQDQDSFLDDQP", "IAPQDQDSFLDDQPG", "APQDQDSFLDDQPGV", "PQDQDSFLDDQPGVR", 
"LdBPK_020009000.1", "MAQNDKIAPQDQDSF", "AQNDKIAPQDQDSFL", "QNDKIAPQDQDSFLD", 
"NDKIAPQDQDSFLDD", "DKIAPQDQDSFLDDQ", "KIAPQDQDSFLDDQP", "IAPQDQDSFLDDQPG", 
"APQDQDSFLDDQPGV", "PQDQDSFLDDQPGVR"), score = c(1, 17007, 12388, 
15984, 23405, 31897, 26826, 35239, 35361, 36486, 1, 17007, 12388, 
15984, 23405, 31897, 26826, 35239, 35361, 36486), epitope = structure(c(1L, 
2L, 2L, 2L, 3L, 3L, 3L, 3L, 3L, 3L, 1L, 2L, 2L, 2L, 3L, 3L, 3L, 
3L, 3L, 3L), .Label = c("", "Epitope", "Non-Epitope"), class = "factor"), 
    positioning = c(TRUE, FALSE, FALSE, FALSE, FALSE, FALSE, 
    FALSE, FALSE, FALSE, FALSE, TRUE, FALSE, FALSE, FALSE, FALSE, 
    FALSE, FALSE, FALSE, FALSE, FALSE), accessions = c("LdBPK_010012800.1", 
    NA, NA, NA, NA, NA, NA, NA, NA, NA, "LdBPK_020009000.1", 
    NA, NA, NA, NA, NA, NA, NA, NA, NA)), row.names = c(NA, -20L 
), .Names = c("sequence", "score", "epitope", "positioning", 
"accessions"), class = "data.frame") 

(其实我的原始数据帧有超过100万行,所以这只是它的一小部分)

我想input$accessions下回收非NA的值(与LdBPK_010012800.1开始),直到我发现下一个非NA值(考虑本示例中,LdBPK_020009000.1)。然后我将回收低于LdBPK_020009000.1的NA值,直到遇到下一个非NA值,依此类推。

此操作后,我的新的数据帧应该是这样的:

structure(list(sequence = c("LdBPK_010012800.1", "MAQNDKIAPQDQDSF", 
"AQNDKIAPQDQDSFL", "QNDKIAPQDQDSFLD", "NDKIAPQDQDSFLDD", "DKIAPQDQDSFLDDQ", 
"KIAPQDQDSFLDDQP", "IAPQDQDSFLDDQPG", "APQDQDSFLDDQPGV", "PQDQDSFLDDQPGVR", 
"LdBPK_020009000.1", "MAQNDKIAPQDQDSF", "AQNDKIAPQDQDSFL", "QNDKIAPQDQDSFLD", 
"NDKIAPQDQDSFLDD", "DKIAPQDQDSFLDDQ", "KIAPQDQDSFLDDQP", "IAPQDQDSFLDDQPG", 
"APQDQDSFLDDQPGV", "PQDQDSFLDDQPGVR"), score = c(1, 17007, 12388, 
15984, 23405, 31897, 26826, 35239, 35361, 36486, 1, 17007, 12388, 
15984, 23405, 31897, 26826, 35239, 35361, 36486), epitope = structure(c(1L, 
2L, 2L, 2L, 3L, 3L, 3L, 3L, 3L, 3L, 1L, 2L, 2L, 2L, 3L, 3L, 3L, 
3L, 3L, 3L), .Label = c("", "Epitope", "Non-Epitope"), class = "factor"), 
    positioning = c(TRUE, FALSE, FALSE, FALSE, FALSE, FALSE, 
    FALSE, FALSE, FALSE, FALSE, TRUE, FALSE, FALSE, FALSE, FALSE, 
    FALSE, FALSE, FALSE, FALSE, FALSE), accessions = c("LdBPK_010012800.1", 
    "LdBPK_010012800.1", "LdBPK_010012800.1", "LdBPK_010012800.1", 
    "LdBPK_010012800.1", "LdBPK_010012800.1", "LdBPK_010012800.1", 
    "LdBPK_010012800.1", "LdBPK_010012800.1", "LdBPK_010012800.1", 
    "LdBPK_020009000.1", "LdBPK_020009000.1", "LdBPK_020009000.1", 
    "LdBPK_020009000.1", "LdBPK_020009000.1", "LdBPK_020009000.1", 
    "LdBPK_020009000.1", "LdBPK_020009000.1", "LdBPK_020009000.1", 
    "LdBPK_020009000.1")), row.names = c(NA, -20L), .Names = c("sequence", 
"score", "epitope", "positioning", "accessions"), class = "data.frame") 

我这样做,因为我的最终目标是通过accessions使用dplyr分组和score

下获得各组的总和

回答

0

我们可以用fill

library(tidyverse) 
df1 %>% 
    fill(accessions)