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How to fix cursor issue with content editable attribute?

There is input field with content editable. Need to display block that contain img and none-displayable span with text. Snippet below did the task. But it has bug. And I can not change contenteditable because it belong external site and my code run in browser extension.

Run snippet. Click end of line, press left arrow button a few times. Your cursor moving through images to text. It's okay. Now press right arrow button and try to arrived end of line. When cursor get there first image, cursor's selection disappears. Another words, we can move cursor from right to left, but fail from left to right.

.editor {
    display: inline-block;
    width: 200px;
}

.hide {
  display: none;
}
<div class="editor" contenteditable="true">text <span contenteditable="false"><span class="hide"> DogePls </span><img alt="DogePls" src="https://cdn.betterttv.net/emote/55c7eb723d8fd22f20ac9cc1/1x.webp"></span><span contenteditable="false"><span class="hide"> DogePls </span><img alt="DogePls" src="https://cdn.betterttv.net/emote/55c7eb723d8fd22f20ac9cc1/1x.webp"></span><span contenteditable="false"><span class="hide"> DogePls </span><img alt="DogePls" src="https://cdn.betterttv.net/emote/55c7eb723d8fd22f20ac9cc1/1x.webp"></span></div>

If between images will any symbols, bug fix. But I need not symbols there. Because input field is message sender for chat where user can typing in any place.

I tried add pseudo element, bug still reproduce.

span[contenteditable=false]:after {
    content: "space";
}
Via Active questions tagged javascript - Stack Overflow https://ift.tt/eDV8fxB

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