“…While most protein structure prediction methods take pre-computed features as input and output a contact or distance map, possibly augmented with other geometrical features (Fig. 1, see iPhord, ProSPr [34], Kiharalab_Contact [35], Pharmulator, DeepPotential, RaptorX [36], Galaxy, Triple-tRes [37], A2I2Prot, DESTINI2 [38], DeepHelicon [39], DeepHomo [40], ICOS, PrayogRealDistance [41,42], RBO-PSP-CP [43], DeepECA, ropius0 [44], tFOLD, plus QUARK, Risoluto, Multicom [45] and those from the Zhang lab), several efforts have been recently engaged towards developing end-to-end architectures. Here, we will shortly review these efforts and try to identify the key components of what represents end-to-end learning in protein structure prediction (Table 1).…”