Table 3 Top 34 features (5%) showing the most discriminative biomarkers for multi-biological predictions.

From: An integrated machine learning framework for a discriminative analysis of schizophrenia using multi-biological data

Number

Feature name

Feature type

Number

Feature name

Feature type

1

SOD

Blood

18

Undefinedb

GM

2

MLR

Blood

19

Anaerostipes

GM

3

Lactobacillus

GM

20

PLT

Blood

4

MON

Blood

21

alpha2_aNLe_P4

EEG

5

Haemophilus

GM

22

Dialister

GM

6

Prevotella

GM

23

beta1_aLambda

EEG

7

NEU

Blood

24

Slackia

GM

8

CRP

Blood

25

Undefined

GM

9

Megamonas

GM

26

Odoribacter

GM

10

theta_aNLe_T6a

EEG

27

Ruminococcusc

GM

11

theta_aNe_T6

EEG

28

theta_aDc_FP1

EEG

12

theta__aNCp_T6

EEG

29

alpha2__aNCp_P4

EEG

13

WBC

Blood

30

beta2_aNLe_FP2

EEG

14

NLR

Blood

31

beta2_aDc_O2

EEG

15

Collinsella

GM

32

Gemmiger

GM

16

gamma_aDc_F7

EEG

33

alpha2_aNLe_T4

EEG

17

Clostridium

GM

34

alpha2__aNCp_T4

EEG

  1. The top 34 features are listed in the descending order of their weights.
  2. GM gut microbiota, EEG electroencephalogram, SOD superoxide dismutase, MLR monocyte–lymphocyte ratio, MON monocyte, NEU neutrophil, CRP C-reactive protein, WBC white blood cell, NLR neutrophil–lymphocyte ratio, PLT platelet, aNLe nodal local efficiency, aNe nodal efficiency, aNCp nodal clustering coefficient, aDc degree centrality.
  3. aThe EEG features are represented as a_b_c, where a represents the frequency band, b represents brain network attributes, and c represents the electrode channel.
  4. bUndefined Lachnospiraceae.
  5. cUndefined Ruminococcaceae.