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. 2022 Jan 21;13(2):190. doi: 10.3390/genes13020190

Functional Innovation through Gene Duplication Followed by Frameshift Mutation

Baocheng Guo 1,2,3,*, Ming Zou 1, Takahiro Sakamoto 4, Hideki Innan 4,*
Editor: Nico M Van Straalen
PMCID: PMC8872073  PMID: 35205235

Abstract

In his influential book “Evolution by Gene Duplication”, Ohno postulated that frameshift mutation could lead to a new function after duplication, but frameshift mutation is generally thought to be deleterious, and thus drew little attention in functional innovation in duplicate evolution. To this end, we here report an exhaustive survey of the genomes of human, mouse, zebrafish, and fruit fly. We identified 80 duplicate genes that involved frameshift mutations after duplication. The frameshift mutation preferentially located close to the C-terminus in most cases (55/88), which indicated that a frameshift mutation that changed the reading frame in a small part at the end of a duplicate may likely have contributed to adaptive evolution (e.g., human genes NOTCH2NL and ARHGAP11B) otherwise too deleterious to survive. A few cases (11/80) involved multiple frameshift mutations, exhibiting various patterns of modifications of the reading frame. Functionality of duplicate genes involving frameshift mutations was confirmed by sequence characteristics and expression profile, suggesting a potential role of frameshift mutation in creating functional novelty. We thus showed that genomes have non-negligible numbers of genes that have experienced frameshift mutations following gene duplication. Our results demonstrated the potential importance of frameshift mutations in molecular evolution, as Ohno verbally argued 50 years ago.

Keywords: Ohno, gene duplication, frameshift mutation, NOTCH2NL, ARHGAP11B

1. Introduction

The significance of gene duplication for genetic innovation was first recognized by Stephens in the 1950s [1], and then popularized by Ohno in the 1970s [2]. Ohno postulated that one duplicate could evolve a new function by mutations, the scenario later well recognized as neofunctionalization. The evolution of gene duplication on a genomic scale has been extensively studied in a wide range of species, most of which argued the relative contribution of neofunctionalization and its derivatives, including subfunctionalization, by looking at amino acid evolution by point mutations and/or expression changes [3].

It is interesting to note that, in his seminal book Evolution by Gene Duplication [2], Ohno pointed out a potential role of frameshift mutations in neofunctionalization:

“Starting with a frame-shift mutation, a duplicate might acquire a new function, which is totally different from that assigned to the original gene. Admittedly, this is a one in a million chance, but in evolution, events with the odds of one in one million occurred time and time again”.

We re-recognized the importance of frameshift mutations from recent reports on duplication of the human NOTCH genes [4,5]. After the split with chimpanzee, a copy of human NOTCH2 genes acquired a new function by a 4 bp deletion that introduced a fragment of completely new amino acid sequences. This duplicate, named NOTCH2NL, was further duplicated, and was speculated to have contributed to the rapid evolution of the human brain size. This striking case is exactly what Ohno pointed out, thereby motivating us to explore the contribution of frameshift mutations in the evolution of duplicate genes. Our literature survey found the human ARHGAP11 genes as another convincing case [6,7,8,9,10]. ARHGAP11B arose from duplication of ARHGAP11A in the human lineage after separation from the chimpanzee lineage, and evolved the new function of increasing basal progenitor amplification during neocortex development. The new function of ARHGAP11B is acquired by a 55 deletion in its mRNA that leads to loss of RhoGAP activity by GAP domain truncation, and addition of a human-specific carboxy-terminal amino acid sequence [6,7].

Beside these clear cases, there have been very few documentations of frameshift mutations involved in the adaptive evolution. Several genomic surveys for frameshifts between duplicate genes have been reported [11,12,13,14] in animals. However, most of the identified ones were involved in complex alternative splicing and exon shuffling, and none was a convincing case of Ohno’s prediction, except for one case in the rodent lineage (the functional divergence between NKG2A and NKG2C) [11]. In plants, putative frameshift mutations were found in the MADS-box gene family, the B-function DEF/AP3 subfamily, the A-function SQUA/AP1 subfamily, and the E-function AGL2 subfamily, all of which are involved in the specification of organ identity during flower development [15].

We here report an exhaustive survey of the genomes of human (Homo sapiens), mouse (Mus musculus), zebrafish (Danio rerio), and fruit fly (Drosophila melanogaster) to identify frameshift mutation in duplicates. We evaluate and argue for the contribution of the scenario of duplication–frameshift–neofunctionalization in these four diverse organisms and its evolutionary consequences.

2. Materials and Methods

Genomic data was retrieved from Ensembl (release 88). To identify putative duplicates, TBLASTX [16] of all coding sequences (CDS) against themselves was first performed with an E-value cutoff of 1 × 10−7 in each genome. This meant that all transcripts for each gene were included to exclude frameshifts that were introduced by alternative splicing. Then, high-scoring pairs (HSP) with both overlap and identification ≥ 70% were selected as putative duplicates using custom Perl scripts. Next, a protein sequence from one CDS of a HSP was mapped to another CDS of the HSP with GeneWise [17] for each HSP to identify HSPs with frameshift mutation. HSPs with frameshift mutations were selected as potential candidates. Considering that alternative splicing commonly results in frameshift mutation among different transcripts in a gene, only candidate HSPs in each of which all transcripts from one gene against all transcripts from another gene with consistently the same frameshift mutation were kept. As such, redundancy of the candidate HSPs with frameshifts was also reduced from transcript to gene level. Thirdly, duplication events of the identified duplicated pair with frameshift mutations were confirmed with a comparative genomics profile in Ensembl. Finally, the candidate duplicated pairs with frameshift mutations were manually checked with great care for orthology, synteny, and sequence alignment by utilizing multiple sequence alignments of orthologs and paralogs in Ensembl.

To best investigate the evolutionary trajectory of frameshift mutations in duplicates, frameshift mutations were defined by considering the outgroup; that is, the sequence from the most closely related species free from the duplication event. In cases without available outgroup sequences, frameshift mutations were defined in the shorter copy by considering characteristics of the copy with frameshift mutations in cases with outgroup sequences. First, location and length of frameshift mutations were sketched. An example is shown in Figure 1. The region in which both copies used the same reading frame was referred to as a common frame region. The region using the new reading frame in the derived copy was called the frameshifted region, and its corresponding part in the original copy was called the original frame region. Then, the divergence and selection pressure between duplicates in their common frame and frameshift region were characterized, respectively, by calculating the numbers of synonymous (Ks) and nonsynonymous substitutions (Ka) per site using codeml with the pairwise model in PAML4 [18]. Specifically, to estimate the selection pressure, an ancestry sequence was first reconstructed based on duplicates and their closely related outgroup sequence at the nucleotide level. Then, Ka and Ks in each copy of duplicates were calculated by comparison between the duplicate sequence and its ancestry sequence for the common frame region and the frameshifted region, respectively. For the calculation of Ka and Ks, we used the original reading frame.

Figure 1.

Figure 1

An example of duplicated genes, with one copy having experienced a frameshift mutation (H10, OR2T7, and OR2T27 in human in Table 1).

The gene expression information was retrieved from GTEx (https://www.gtexportal.org/home/, accessed on 2 April 2020) for human, and from MGI (http://www.informatics.jax.org/, accessed on 2 April 2020) for mouse. The gene expression information for zebrafish was obtained by mapping RNA-seq data from SRA to its genome with HISAT and StringTie pipeline [19]. The statistics were done in R version 3.3.3.

3. Results and Discussion

We identified in total 80 pairs of duplicate genes with frameshift mutations between them in these species (see Materials and Methods): 17 in human (NOTCH2 genes were not found because they were not annotated in Ensembl release 88), 30 in mouse, 31 in zebrafish, and 2 in fruit fly (Table 1). For each pair of duplicates, we searched for an outgroup sequence, which allowed us to determine which copy underwent frameshift mutation(s) (referred to as the derived copy) and which was the original copy. To do so, we computed Ks_C and Ka_C, the numbers of synonymous and nonsynonymous substitutions per site in common frame regions, respectively. We predicted that Ks_C roughly gave the age of the duplication, while knowing the gene conversion between them retarded the divergence [20]. We then searched for an outgroup sequence such that Ks_C was sufficiently smaller than the typical species divergence at synonymous sites. We further looked at the synteny to confirm their orthology. We determined the original and derived copies for 53 cases (Tables S1 and S2).

Table 1.

Duplicated genes with frameshift mutations.

Species Group ID Gene ID of
Original Copy
Gene ID of
Derived Copy
Gene Name of Original Copy Gene Name of Derived Copy Gene ID of Outgroup No. of Frameshift Mutations Type Length (No. of Amino Acids) Expression
Divergence
Human H01 ENSG00000235233.8 ENSG00000204520.12 MICA MICA ENSPTRT00000033163.5 1 C **** 15/223/385 *** Quantitative level
H02 ENSG00000235233.8 ENSG00000231225.9 MICA MICA ENSPTRT00000033163.5 1 C 15/289/385 Quantitative level
H03 ENSG00000235233.8 ENSG00000233051.9 MICA MICA ENSPTRT00000033163.5 2 N&C 27/194/385&15/194/385 Quantitative level
H04 ENSG00000233439.7 ENSG00000206458.9 PSORS1C1 PSORS1C1 ENSPTRT00000066839.2 1 C 24/63/152 Quantitative level
H05 ENSG00000170122.5 ENSG00000184492.6 FOXD4 FOXD4L1 ENSMICG00000036465 1 C 116/408/439 Quantitative level
H06 ENSG00000153779.10 ENSG00000176679.8 TGIF2LX TGIF2LY ENSPCOT00000008535.1 1 C 37/185/241 Pattern/Quantitative level *****
H07 ENSG00000170122.5 ENSG00000273514.1 FOXD4 FOXD4L6 ENSMICG00000036465 1 C 55/417/439 Quantitative level
H08 ENSG00000275568.4 ENSG00000187951.10 ARHGAP11A ARHGAP11B ENSPTRT00000012671.3 1 C 47/267/1023 Pattern/Quantitative level
H09 ENSG00000204149.10 ENSG00000204172.12 AGAP6 AGAP9 ENSPTRG00000029891 1 C 15/658/686 Quantitative level
H10 ENSG00000187701.3 ENSG00000281395.1 OR2T27 OR2T7 ENSGGOG00000003840 1 N 17/308/317 NA
H11 ENSG00000211678.2 ENSG00000211676.2 IGLJ3 IGLJ2 NA 1 N 16/47/50 Pattern/Quantitative level
H12 ENSG00000274070.1 ENSG00000239521.7 CASTOR2 CASTOR3 NA 1 N 36/163/329 Quantitative level
H13 ENSG00000258405.9 ENSG00000221874.4 ZNF578 ZNF816-ZNF321P ENSCCAG00000033386 1 C 12/233/253 Quantitative level
H14 ENSG00000134545.13 ENSG00000183542.5 KLRC4 KLRC4 ENSMUST00000053708.8 * 1 C 15/158/233 Pattern/Quantitative level
H15 ENSG00000134545.13 ENSG00000255819.7 KLRC1 KLRC4-KLRK1 ENSMUST00000053708.8 1 C 15/150/228 Quantitative level
H16 ENSG00000182816.8 ENSG00000186980.6 KRTAP13-2 KRTAP23-1 NA 1 C 26/65/175 Pattern/Quantitative level
H17 ENSG00000152086.8 ENSG00000243910.7 TUBA3E TUBA4B NA 1 C 40/241/450 Quantitative level
Mouse M01 ENSMUSG00000060816.2 ENSMUSG00000062546.4 Vmn1r52 V1ra8 ENSRNOT00000086882.1 1 C 13/279/309 Pattern/Quantitative level
M02 ENSMUSG00000094918.3 ENSMUSG00000096641.6 Gm8765 Gm904 ENSRNOT00000060670.1 1 C 16/102/1017 Pattern/Quantitative level
M03 ENSMUSG00000066487.3 ENSMUSG00000090544.2 Gm5786 Gm6576 ENSRNOT00000019508.6 1 N 13/274/302 Pattern/Quantitative level
M04 ENSMUSG00000066487.3 ENSMUSG00000044533.15 Gm5786 Rps2 ENSRNOT00000019508.6 1 C 26/293/302 Pattern/Quantitative level
M05 ENSMUSG00000091733.1 ENSMUSG00000096372.1 Gm8094 Gm8138 ENSRNOT00000046644.4 * 1 N 51/213/211 Pattern/Quantitative level
M06 ENSMUSG00000072066.6 ENSMUSG00000055228.7 6720489N17Rik Zfp935 ENSRNOT00000061526.2 1 C 62/106/353 Pattern/Quantitative level
M07 ENSMUSG00000099974.1 ENSMUSG00000053820.4 Bcl2a1d Bcl2a1c ENSRNOT00000039850.3 1 C 26/128/172 Pattern/Quantitative level
M08 ENSMUSG00000109516.1 ENSMUSG00000109396.1 Gm6882 Gm4565 ENSRNOT00000058760.2 1 C 13/301/313 NA
M09 ENSMUSG00000091477.1 ENSMUSG00000072595.2 Gm5799 4930503E14Rik NA 1 C 15/177/201 Pattern/Quantitative level
M10 ENSMUSG00000096446.1 ENSMUSG00000079244.3 Gm8104 Gm5622 ENSRNOT00000042743.5 1 C 19/167/198 Pattern/Quantitative level
M11 ENSMUSG00000099115.1 ENSMUSG00000092086.1 Gm17190 Gm6793 NA 1 N 28/357/351 Pattern/Quantitative level
M12 ENSMUSG00000031320.9 ENSMUSG00000098559.1 Rps4x Gm15013 ENSRNOT00000076978.3 1 C 11/263/266 Pattern/Quantitative level
M13 ENSMUSG00000062456.3 ENSMUSG00000081906.2 Rpl9-ps6 Rpl9-ps1 ENSRNOT00000052231.4 3 M 15/191/192 Pattern/Quantitative level
M14 ENSMUSG00000047980.6 ENSMUSG00000091411.1 9230110F15Rik Gm5916 ENSRNOT00000032208.3 1 C 18/102/117 Pattern/Quantitative level
M15 ENSMUSG00000099294.1 ENSMUSG00000081607.2 Gm11214 Gm15294 NA 1 C 20/183/112 Pattern/Quantitative level
M16 ENSMUSG00000055942.13 ENSMUSG00000074369.12 Obox7 Obox2 ENSRNOT00000045660.2 1 C 27/151/218 Pattern/Quantitative level
M17 ENSMUSG00000094472.1 ENSMUSG00000094856.1 Gm21897 Gm21962 ENSRNOT00000091672.1 1 C 19/338/500 Pattern/Quantitative level
M18 ENSMUSG00000024766.14 ENSMUSG00000086875.1 Lipo3 Lipo5 ENSRNOT00000035013.4 2 M 20/233/399 Pattern/Quantitative level
M19 ENSMUSG00000108596.1 ENSMUSG00000062997.6 Gm49368 Rpl35 NA 1 C 48/125/123 Pattern/Quantitative level
M20 ENSMUSG00000067919.8 ENSMUSG00000058186.13 Rex2 Zfp980 ENSRNOT00000081537.1 1 C 11/645/685 Pattern/Quantitative level
M21 ENSMUSG00000061829.3 ENSMUSG00000071490.3 Vmn1r214 Vmn1r212 NA 1 C 55/357/367 Pattern/Quantitative level
M22 ENSMUSG00000061829.3 ENSMUSG00000060024.1 Vmn1r214 ** Vmn1r213 NA 1 N 79/384/367 Pattern/Quantitative level
M23 ENSMUSG00000078495.10 ENSMUSG00000078496.9 Zfp984 Zfp982 ENSRNOT00000034746.6 1 C 16/368/547 Pattern/Quantitative level
M24 ENSMUSG00000100296.1 ENSMUSG00000069289.1 Vmn1r205 Vmn1r203 MGP_PahariEiJ_T0040451.1 1 C 11/311/316 Pattern/Quantitative level
M25 ENSMUSG00000095638.1 ENSMUSG00000093922.1 Gm8888 Rpl36-ps4 NA 3 N&M 34/117/126&9/117/126 Pattern/Quantitative level
M26 ENSMUSG00000096515.5 ENSMUSG00000091008.1 Igkv14-100 Gm17472 ENSRNOT00000087773.1 1 C 14/117/117 Pattern/Quantitative level
M27 ENSMUSG00000051242.1 ENSMUSG00000045062.4 Pcdhb9 Pcdhb7 ENSMOCT00000026210.1 3 M 20/829/828 Pattern/Quantitative level
M28 ENSMUSG00000067199.4 ENSMUSG00000070526.2 Frat1 Frat3 ENSNGAT00000028350.1 1 C 17/283/274 Pattern/Quantitative level
M29 ENSMUSG00000027925.2 ENSMUSG00000050635.1 Sprr2j-ps Sprr2f NA 1 C 56/76/109 Pattern/Quantitative level
M30 ENSMUSG00000035783.8 ENSMUSG00000099104.1 Acta2 Gm17087 NA 1 C 21/156/221 Pattern/Quantitative level
Zebrafish Z01 ENSDARG00000099789.1 ENSDARG00000095189.1 si:ch211-76m11.7 si:ch211-127n13.2 NA 2 C 20/157/173 Pattern/Quantitative level
Z02 ENSDARG00000090975.3 ENSDARG00000103701.1 si:dkey-62k3.5 NA XP_025757774.1 1 N 29/91/133 Pattern/Quantitative level
Z03 ENSDARG00000092779.1 ENSDARG00000102941.1 si:rp71-23d18.4 si:ch211-249c2.1 NA 1 N 14/193/229 Pattern/Quantitative level
Z04 ENSDARG00000097099.1 ENSDARG00000095593.1 si:ch211-108d22.1 si:ch211-134c9.2 XP_018956261.1 1 N 15/63/66 Pattern/Quantitative level
Z05 ENSDARG00000102028.1 ENSDARG00000102853.1 si:dkey-151g22.1 Si:rp71-7l19.2 XP_018942195.1 1 N 21/233/266 Pattern/Quantitative level
Z06 ENSDARG00000092625.2 ENSDARG00000092202.2 HTRA2 HTRA2 ENSIPUT00000009250.1 1 C 15/194/214 Pattern/Quantitative level
Z07 ENSDARG00000095545.2 ENSDARG00000094878.2 HTRA2 si:dkey-84o3.6 ENSIPUT00000009250.1 1 C 34/198/203 Pattern/Quantitative level
Z08 ENSDARG00000074279.1 ENSDARG00000078586.3 NA NA CI01000026_05016210_05017522 * 1 N 22/221/233 Pattern/Quantitative level
Z09 ENSDARG00000095444.1 ENSDARG00000093963.2 si:dkey-112g5.16 si:dkey-112g5.12 ENSIPUT00000009250.1 1 N 24/202/268 Pattern/Quantitative level
Z10 ENSDARG00000092512.1 ENSDARG00000093579.1 si:dkey-93l1.6 si:dkey-80c24.4 XP_018949576.1 2 M 34/218/462 Pattern/Quantitative level
Z11 ENSDARG00000090975.3 ENSDARG00000099246.1 si:dkey-62k3.5 NA XP_025757774.1 1 N 20/108/133 Pattern/Quantitative level
Z12 ENSDARG00000095532.1 ENSDARG00000095026.1 si:dkey-58f10.13 si:dkey-58f10.14 NA 1 C 63/216/232 Pattern/Quantitative level
Z13 ENSDARG00000092512.1 ENSDARG00000091890.1 si:dkey-93l1.6 si:dkeyp-67e1.3 XP_018949576.1 1 C 54/288/462 Pattern/Quantitative level
Z14 ENSDARG00000099200.1 ENSDARG00000077910.4 zgc:123103 si:zfos-1897c11.1 ENSIPUT00000032654.1 1 N 12/257/347 Pattern/Quantitative level
Z15 ENSDARG00000043445.5 ENSDARG00000093845.3 si:ch211-152f2.3 si:ch211-1f22.12 XP_016119820.1 1 C 37/360/384 Pattern/Quantitative level
Z16 ENSDARG00000094001.3 ENSDARG00000093588.1 si:dkey-6a5.3 si:dkey-234l24.8 NA 1 C 15/70/90 Pattern/Quantitative level
Z17 ENSDARG00000104631.1 ENSDARG00000078683.3 RNF14 RNF14 ENSIPUT00000017639.1 1 C 77/413/387 Pattern/Quantitative level
Z18 ENSDARG00000094001.3 ENSDARG00000094329.1 si:dkey-6a5.3 si:dkey-234l24.1 NA 2 C 18/73/90 Pattern/Quantitative level
Z19 ENSDARG00000017984.10 ENSDARG00000096625.1 zgc:172106 si:ch211-286b5.8 NA 1 C 13/332/394 Pattern/Quantitative level
Z20 ENSDARG00000043894.5 ENSDARG00000102034.1 si:ch211-214k5.3 si:ch211-214k5.3 XP_016341397.1 2 C 38/124/124 Pattern/Quantitative level
Z21 ENSDARG00000026704.6 ENSDARG00000097373.2 ftr72 ftr90 XP_016407654.1 1 N 18/489/550 Pattern/Quantitative level
Z22 ENSDARG00000078195.2 ENSDARG00000104993.2 fhit si:ch211-63i20.3 XP_018967896.1 1 C 11/110/150 Pattern/Quantitative level
Z23 ENSDARG00000100941.1 ENSDARG00000086498.3 clca1 si:ch211-116o3.3 CI01000308_00041387_00048067 1 C 9/229/907 Pattern/Quantitative level
Z24 ENSDARG00000102866.1 ENSDARG00000105247.1 CR391991.1 CR391991.5 NA 1 C 35/206/223 Pattern/Quantitative level
Z25 ENSDARG00000095057.2 ENSDARG00000070858.4 si:dkey-103d23.3 si:busm1-105l16.2 XP_016375730.1 2 M 34/226/267 Pattern/Quantitative level
Z26 ENSDARG00000097997.1 ENSDARG00000089747.3 si:ch211-272b8.7 si:zfos-754c12.2 NA 1 N 42/330/391 Pattern/Quantitative level
Z27 ENSDARG00000068363.5 ENSDARG00000092930.1 si:ch211-132b12.3 si:ch211-132b12.4 CI01000028_05937526_05949610 1 N 10/112/577 Pattern/Quantitative level
Z28 ENSDARG00000069869.3 ENSDARG00000103341.1 zgc:113030 si:ch211-110e21.4 NA 1 C 16/215/240 Pattern/Quantitative level
Z29 ENSDARG00000099359.1 ENSDARG00000086495.2 CR855320.1 BX546500.1 KKF19921.1 * 1 C 12/1344/1430 Pattern/Quantitative level
Z30 ENSDARG00000001431.10 ENSDARG00000104713.1 actn3b zgc:165653 ENSEBUT00000022154.1 1 C 32/151/898 Pattern/Quantitative level
Z31 ENSDARG00000101249.2 ENSDARG00000105342.1 zgc:165555 si:dkey-23a13.12 ENSTNIG0000000877 1 C 46/69/103 Pattern/Quantitative level
Fruit fly F01 FBgn0053236 FBgn0053242 CSNK2B CSNK2B KMQ81491.1 2 M 19/171/172 Pattern/Quantitative level
F02 FBgn0262610 FBgn0262575 NA NA FBgn0167536 1 C 20/192/196 Pattern/Quantitative level

* An outgroup sequence was obtained and used to determine the original and derived copies, but was not used for sequence analyses due to bad alignment. ** This was an exceptional case in which the shorter copy (Vmn1r213) was considered ancestral even with no outgroup, because Vmn1r214 was also the ancestral copy for the case of M21. *** The length of frameshift region/the length of the derived copy/the length of the original copy. **** “C”, ““M”, and “N” mean that the frameshift changed the reading frame in the C-terminus, middle region, or N-terminus of the amino acid sequence of a gene, respectively. ***** Showing tissue-specific expression divergence/only quantitative level expression divergence between duplicates with frameshift mutation. NA: not available.

We first looked at the number and the locations of frameshift mutations. We found that most cases (69/80) experienced only one frameshift mutation, while the others underwent multiple frameshift mutations (11/80). The 69 cases with one frameshift mutation were categorized into type-C and -N classes according to whether the frameshift mutation changed the reading frame in the C- or N-terminus of the amino acid sequence. Only a representative case is shown for type-C and -N classes in Figure 2A,B, respectively. We found that the majority was categorized into the type-C class (51 vs. 18, p = 0.0001, binomial test). The enrichment of type-C was reasonable, because it can be explained by a single mutation alone; that is, the reading frame downstream of the mutation was changed by the mutation. In contrast, although only one mutation was detected for a type-N case, it should be noted that another mutation upstream of the start codon is needed to create a type-N (otherwise, it becomes a type-C).

Figure 2.

Figure 2

Locations of typical frameshift mutations along their coding sequences in bp from the start codon. The original and derived copies are presented in light blue and blue, with frameshifted regions in red. Triangles with positive numbers are insertions, and reverse triangles with negative numbers are deletions. The numbers are the sizes of the indels. (A) One representative case for type-C. (B) One representative case for type-N. (C) Seven cases involving multiple frameshift mutations: H12, CASTOR3, and CASTOR2 in human; H10, OR2T7, and OR2T27 in human; H3, MICA, and MICA in human; M13, Rpl-ps1, and Rpl-ps6 in mouse; M18, Lipo5, and Lipo3 in mouse; M27, Pcdhb7, and Pcdhb9 in mouse; Z20 and Z25 in zebrafish (gene names are unavailable); and F01, CSNK2B, and CSNK2B in fruit fly.

If we used those with an outgroup sequence available (34 type-C and 12 type-N cases), we found that the frameshifted region was shorter than the original frame region in >80% cases (27/34 and 11/12 cases for type-C and -N, respectively). If the entire coding region of the original copy was assigned to the unit interval (0,1), the average relative length of the frameshifted region (0.16 and 0.10 for type-C and -N cases, respectively) was shorter than the original frame region (0.30 and 0.21 for type-C and -N cases, respectively), and the difference was significant (p = 0.05 and 0.01 for type-C and -N cases, respectively; permutation test). It was suggested that a frameshift mutation likely resulted in a shorter coding region, which was also seen in NOTCH2NL [4,5] and ARHGAP11B [6,7].

Figure 3A shows the distribution of relative locations of frameshift mutations, where we used these 46 cases with an outgroup available and also 23 cases with no outgroup (in total, 51 type-C and 18 type-N cases). For the latter cases, given the above results, we assumed that the shorter ones were derived copies, with one exceptional case M22 (Table S1). It was found that their distributions were not uniform, and that most frameshift mutations were found close to the stop codon of the original copy for type-C cases and close to the start codon for type-N cases. Figure 3B shows the distribution of relative length of the frameshifted region, indicating that the length of the frameshifted region in general was shorter than 20% of the entire region.

Figure 3.

Figure 3

(A) Distribution of the locations of frameshift mutations mapped on the original copy rescaled to the (0,1) interval. (B) Distribution of the size of frameshifted region relative to the original copy. (C) Distribution of Ks_C for type-C, -N, and -M. (D) Distribution of Ka_C/Ks_C for type-C, -N, and -M. Data for the four species are pooled. (E) Distribution of Ks_C for human, mouse, zebrafish, and fruit fly. (F) Distribution of Ka_C/Ks_C for human, mouse, zebrafish, and fruit fly. Data for type-C, -N, and -M are pooled. The data were binned with a window of size 0.1 in all panels.

The patterns of the 11 cases with multiple frameshift mutations greatly varied; for 7 of these, we obtained an outgroup sequence, and the alignment of the original and derived copies are shown in Figure 2C. The 11 cases included 3 Type-C cases with 2 mutations (Z01, Z18, and Z20, of which Z20 is shown in Figure 2C). These cases were most likely created as follows. A first frameshift mutation created a frameshifted region in the C-terminus, and a second frameshift mutation occurred downstream of the first one, causing another new reading frame. A similar pattern was observed in six cases (M13, M18*, M25, M27*, Z10, and F01*, of which those with a star are shown in Figure 2C), where more than one mutation created a frameshifted region in the middle of the coding region (type-M). For these cases, it is reasonable to consider that a first mutation created a frameshifted region in the C-terminus, and a secondary frameshift mutation occurred downstream of the first one. The difference was that a secondary mutation reversed the reading frame back to the original reading frame. Other complex cases included H03 (Figure 2C), which experienced two frameshift mutations, resulting in two distinct frameshifted regions, one in the C-terminus and the other in the N-terminus.

Figure 3C,D show the distributions of Ks_C and Ka_C/Ks_C for 51 type-C, 18 type-N, and 11 multiple-mutation cases. We found that most cases had Ks_C < 0.3, while some type-C cases had Ks_C > 0.3. The distributions of Ka_C/Ks_C for the three types seemed similar: the majority had Ka_C/Ks_C < 1, with an average of 0.65. The exact same distributions are shown with labels of the four species (Figure 3E,F). In Figure S1, the configurations of common frame and frameshifted regions for all 80 cases are shown.

Provided that the most likely fate of a duplicate is to become a pseudogene, a major question is whether those frameshift mutations played a meaningful role in functional genes, or they were merely random deleterious mutations being accumulated on the way to becoming a pseudogene. To address this question, we first asked if those frameshifted duplicates were functional in the current genome. We looked over the list of the duplicates, and found that most of them were well-annotated genes (78/80; Table 1), including ARHGAP11 (our ID: H08) in human, as mentioned above [6,7]; oocyte-specific homeobox (Obox) genes (our ID: M16) [21] and vomeronasal type-1 receptor (Vmn1r) genes (our ID: M21, 22, and 24) [22] in mouse; and alpha-actinin genes (our ID: Z30) in zebrafish [23]. We also confirmed the presence of expression in 78/80 cases, and all of them showed divergence in the expression amount and/or pattern, further supporting their functional importance (Table 1).

Further evidence for stable preservation of the derived frameshifted copy should be seen in their DNA sequences. First, we found that 37/80 cases had Ks_C > 0.1. A relatively large divergence between paralogs (i.e., Ks_C > 0.1) should indicate that these derived copies had been preserved as functional genes for a significant amount of time, while maintaining a low Ka_C. This meant that they had successfully escaped pseudogenization, because pseudogenization usually occurs in a relatively short time after duplication [3].

Next, if frameshift mutations significantly contributed to the acquisition of novel functions, we predicted we would observe accelerated amino acid substitutions in the derived copy, particularly in the frameshifted region. A testable prediction would be that the Ka/Ks ratio was exceeded on the lineage, leading to the derived copy (denoted by Ka_D/Ks_D), particularly in the frameshifted region (denoted by Ka_DF/Ks_DF). We tested this for 49 cases with a reliable outgroup sequence available (Table S2), for which we estimated the ancestral sequence for each pair of duplicates, and synonymous and nonsynonymous divergences from the ancestral sequence to the original and derived copies were computed (denoted by Ka_O and Ks_O for the original copy and Ka_D and Ks_D for the derived copy). Note that we used the original reading frame for this calculation. We found one case (Z13) that exhibited Ka_D/Ks_D significantly larger than 1 for the entire region (Ka_D = 0.058 vs. Ks_D =0.000, p < 0.03). By focusing on the frameshifted region, we tested the null hypothesis of an equal Ka/Ks ratio for the original and derived lineages (i.e., Ka_OF/Ks_OF = Ka_DF/Ks_DF), and found one case (Z13) with a significant deviation (Ka_OF/Ks_OF = 0.000, Ka_DF/Ks_DF = 2.423, p < 0.0001). One might suspect that the observation might be explained by relaxed selection of the derived copy, but this should not be the case, due to a low Ka/Ks ratio in the common frame region (Ka/Ks = 0.27), indicating that the Ka/Ks ratio was elevated only in the frameshifted region, and selective constraint remained in the common frame region. We were unable to detect statistically significant results for the other cases, mostly due to a small number of substitutions because the frameshifted regions were generally very short (Figure S1). If we pooled all cases, we obtained Ka_OF/Ks_OF = 0.374, Ka_DF/Ks_DF = 1.087, suggesting that the amino acid substitution rate was on average large on the lineage, leading to the derived copy in the frameshifted region (but not in the common frame region: Ka_OC/Ks_OC = 0.449, Ka_DC/Ks_DC = 0.519).

Thus, for the majority of the cases, there were reasons that supported significant functional roles of the derived copies in the current genome. We then argued the implications of these results on the potential roles of frameshift mutations. First, it is interesting to point out that if a frameshift mutation occurred in an intact coding gene, it always resulted in type-C; that is, the reading frame downstream of the mutation was modified. All other types (i.e., types-N, -M, etc.) needed subsequent mutations. This should be the reason why the most frequent type was type-C. In type-C cases, frameshift mutations for the C-type were enriched near the C-terminus. Assuming mutation occurred randomly along a gene, the skewed observed distribution should indicate that frameshift mutations were in general deleterious and selected against, especially when enough occurred to change the majority of the reading frame. The condition that a frameshift mutation directly contributes to adaptive evolution is that it confers a selective advantage by creating a new reading frame. Most likely, it should occur without changing the major part of the coding gene, otherwise it would be too deleterious to survive. If the new reading frame is beneficial, the frameshift mutation may be favored by selection and preserved in the genome. Another possible scenario would be that the new reading frame is nearly neutral, so that it is not immediately selected out. Then, subsequent amino acid changing mutations could occur in the frameshifted region to create a beneficial amino acid sequence. Such a secondary mutation has to occur before the first mutation is selected out.

In a similar vein, other kinds of secondary mutations could confer selective advantages, and their outcomes include type-N and -M. Suppose a first frameshift mutation creates a type-C gene. When a secondary frameshift mutation occurs downstream of the first one, it will become a type-M gene if it changes the downstream reading frame to the original frame (i.e., a frameshifted region in the middle of the coding region is observed). As mentioned earlier, to explain a type-N gene, a secondary mutation is needed to create a new translation start site upstream of the first mutation, by which a type-C gene immediately turns out to be a type-N gene. Provided that we observed all frameshift mutations close to the N-terminus (Figure 2A), one possible scenario was that these first frameshift mutations killed the original function and produced pseudogenes temporarily, and secondary rescue mutations recovered the original reading frame, perhaps quickly, resulting in type-N genes. In this work, we found some cases (2/80) with multiple frameshift mutations that could be explained by this scenario. Considering that the rate of such rescue mutations was very low, our observation might be difficult to explain by neutral evolution alone. In addition, it should be considered that the results of our study critically depended on genomic assembly and annotation quality, and sequencing and gene prediction errors may affect studies such as ours here. We expect that long-read sequencing could be utilized to validate our findings in future studies.

4. Conclusions

We thus demonstrated that genomes have non-negligible numbers of genes that have experienced frameshift mutations following gene duplication. In most cases, the majority of the original amino acid sequence was kept, and a small part was modified. A frameshift mutation produced a random amino acid sequence downstream until a premature stop codon arises. It should be very rare that such a random sequence provides a novel function for neofunctionalization, but on a genomic scale, we observed a number of cases that benefited from frameshift mutations. Most especially, the studies of NOTCH genes [4,5] and ARHGAP11 genes [6,7,8,9,10] in human suggest that the functional innovation through gene duplication followed by frameshift mutation could play an important role in adaptive evolution of functional traits. Our results demonstrated the potentially importance of frameshift mutations in molecular evolution, as Ohno verbally argued 50 years ago.

Acknowledgments

We also thank Manyuan Long and three anonymous reviewers for thoughtful and constructive comments on the manuscript.

Supplementary Materials

The following are available online at www.mdpi.com/article/10.3390/genes13020190/s1, Figure S1: Relative location of the common frame region and frameshifted region in the derived copy; Table S1: Summary of duplicated genes with frameshift mutations; Table S2: Summary of sequence analyses.

Author Contributions

Conceptualization, B.G. and H.I.; methodology, M.Z., H.I., T.S. and B.G.; software, M.Z. and T.S.; validation, M.Z., T.S., B.G. and H.I.; formal analysis, M.Z., T.S., B.G. and H.I.; resources, B.G.; data curation, M.Z., T.S., B.G. and H.I.; writing—original draft preparation, B.G. and H.I.; writing—review and editing, B.G. and H.I.; visualization, T.S. and H.I.; funding acquisition, B.G. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by the National Natural Science Foundation of China (grant nos. 32022009 and 31970382) and the Chinese Academy of Sciences (ZDBS-LY-SM005 and the Pioneer Hundred Talents Program).

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Data supporting reported results can be found in the Supplementary Materials.

Conflicts of Interest

The authors declare no conflict of interest.

Footnotes

Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.

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Associated Data

This section collects any data citations, data availability statements, or supplementary materials included in this article.

Supplementary Materials

Data Availability Statement

Data supporting reported results can be found in the Supplementary Materials.


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