Structure

Physi-Chem Properties

Molecular Weight:  188.14
Volume:  205.251
LogP:  2.176
LogD:  0.911
LogS:  -1.706
# Rotatable Bonds:  8
TPSA:  57.53
# H-Bond Aceptor:  3
# H-Bond Donor:  2
# Rings:  0
# Heavy Atoms:  3

MedChem Properties

QED Drug-Likeness Score:  0.574
Synthetic Accessibility Score:  2.379
Fsp3:  0.9
Lipinski Rule-of-5:  Accepted
Pfizer Rule:  Accepted
GSK Rule:  Accepted
BMS Rule:  1
Golden Triangle Rule:  Rejected
Chelating Alert:  0
PAINS Alert:  0

ADMET Properties (ADMETlab2.0)

ADMET: Absorption

Caco-2 Permeability:  -4.93
MDCK Permeability:  3.9116890548029914e-05
Pgp-inhibitor:  0.099
Pgp-substrate:  0.738
Human Intestinal Absorption (HIA):  0.015
20% Bioavailability (F20%):  0.342
30% Bioavailability (F30%):  0.976

ADMET: Distribution

Blood-Brain-Barrier Penetration (BBB):  0.785
Plasma Protein Binding (PPB):  70.58023071289062%
Volume Distribution (VD):  0.265
Pgp-substrate:  38.605201721191406%

ADMET: Metabolism

CYP1A2-inhibitor:  0.035
CYP1A2-substrate:  0.325
CYP2C19-inhibitor:  0.019
CYP2C19-substrate:  0.455
CYP2C9-inhibitor:  0.017
CYP2C9-substrate:  0.946
CYP2D6-inhibitor:  0.01
CYP2D6-substrate:  0.154
CYP3A4-inhibitor:  0.007
CYP3A4-substrate:  0.032

ADMET: Excretion

Clearance (CL):  9.321
Half-life (T1/2):  0.838

ADMET: Toxicity

hERG Blockers:  0.018
Human Hepatotoxicity (H-HT):  0.095
Drug-inuced Liver Injury (DILI):  0.018
AMES Toxicity:  0.006
Rat Oral Acute Toxicity:  0.008
Maximum Recommended Daily Dose:  0.288
Skin Sensitization:  0.379
Carcinogencity:  0.122
Eye Corrosion:  0.975
Eye Irritation:  0.988
Respiratory Toxicity:  0.128

Download Data

Data Type Select
General Info & Identifiers & Properties  
Structure MOL file  
Source Organisms  
Biological Activities  
Similar NPs/Drugs  

  Natural Product: NPC5788

Natural Product ID:  NPC5788
Common Name*:   LMHJFKYQYDSOQO-VIFPVBQESA-N
IUPAC Name:   n.a.
Synonyms:  
Standard InCHIKey:  LMHJFKYQYDSOQO-VIFPVBQESA-N
Standard InCHI:  InChI=1S/C10H20O3/c1-2-3-4-6-9(11)7-5-8-10(12)13/h9,11H,2-8H2,1H3,(H,12,13)/t9-/m0/s1
SMILES:  CCCCC[C@@H](CCCC(=O)O)O
Synthetic Gene Cluster:   n.a.
ChEMBL Identifier:   n.a.
PubChem CID:   6604110
Chemical Classification**:  
  • CHEMONTID:0000000 [Organic compounds]
    • [CHEMONTID:0000012] Lipids and lipid-like molecules
      • [CHEMONTID:0003909] Fatty Acyls
        • [CHEMONTID:0000262] Fatty acids and conjugates
          • [CHEMONTID:0003086] Medium-chain fatty acids

*Note: the InCHIKey will be temporarily assigned as the "Common Name" if no IUPAC name or alternative short name is available.
**Note: the Chemical Classification was calculated by NPClassifier Version 1.5. Reference: PMID:34662515.

  Species Source

Organism ID Organism Name Taxonomy Level Family SuperKingdom Isolation Part Collection Location Collection Time Reference
NPO15811 Sophora pachycarpa Species Fabaceae Eukaryota n.a. root n.a. PMID[17137127]
NPO15994 Dichotella gemmacea Species Ellisellidae Eukaryota n.a. n.a. n.a. PMID[21721519]
NPO15994 Dichotella gemmacea Species Ellisellidae Eukaryota n.a. South China Sea n.a. PMID[21721519]
NPO15994 Dichotella gemmacea Species Ellisellidae Eukaryota n.a. South China Sea n.a. PMID[22647719]
NPO15994 Dichotella gemmacea Species Ellisellidae Eukaryota n.a. n.a. n.a. PMID[23477504]
NPO15811 Sophora pachycarpa Species Fabaceae Eukaryota n.a. n.a. n.a. Database[HerDing]
NPO15811 Sophora pachycarpa Species Fabaceae Eukaryota n.a. n.a. n.a. Database[TCMID]
NPO15811 Sophora pachycarpa Species Fabaceae Eukaryota n.a. n.a. n.a. Database[TCM_Taiwan]
NPO3191.1 Aspergillus terricola var. indicus Varieties Aspergillaceae Eukaryota n.a. n.a. n.a. Database[UNPD]
NPO15811 Sophora pachycarpa Species Fabaceae Eukaryota n.a. n.a. n.a. Database[UNPD]
NPO22177 Ilybius fenestratus Species Dytiscidae Eukaryota n.a. n.a. n.a. Database[UNPD]
NPO28246 Hypomyces rosellus Species Hypocreaceae Eukaryota n.a. n.a. n.a. Database[UNPD]
NPO15994 Dichotella gemmacea Species Ellisellidae Eukaryota n.a. n.a. n.a. Database[UNPD]

☑ Note for Reference:
In addition to directly collecting NP source organism data from primary literature (where reference will provided as NCBI PMID or DOI links), NPASS also integrated them from below databases:
UNPD: Universal Natural Products Database [PMID: 23638153].
StreptomeDB: a database of streptomycetes natural products [PMID: 33051671].
TM-MC: a database of medicinal materials and chemical compounds in Northeast Asian traditional medicine [PMID: 26156871].
TCM@Taiwan: a Traditional Chinese Medicine database [PMID: 21253603].
TCMID: a Traditional Chinese Medicine database [PMID: 29106634].
TCMSP: The traditional Chinese medicine systems pharmacology database and analysis platform [PMID: 24735618].
HerDing: a herb recommendation system to treat diseases using genes and chemicals [PMID: 26980517].
MetaboLights: a metabolomics database [PMID: 27010336].
FooDB: a database of constituents, chemistry and biology of food species [www.foodb.ca].

  NP Quantity Composition/Concentration

Organism ID NP ID Organism Material Preparation Organism Part NP Quantity (Standard) NP Quantity (Minimum) NP Quantity (Maximum) Quantity Unit Reference

☑ Note for Reference:
In addition to directly collecting NP quantitative data from primary literature (where reference will provided as NCBI PMID or DOI links), NPASS also integrated NP quantitative records for specific NP domains (e.g., NPS from foods or herbs) from domain-specific databases. These databases include:
DUKE: Dr. Duke's Phytochemical and Ethnobotanical Databases.
PHENOL EXPLORER: is the first comprehensive database on polyphenol content in foods [PMID: 24103452], its homepage can be accessed at here.
FooDB: a database of constituents, chemistry and biology of food species [www.foodb.ca].

  Biological Activity

Target ID Target Type Target Name Target Organism Activity Type Activity Relation Value Unit Reference

☑ Note for Activity Records:
☉ The quantitative biological activities were primarily integrated from ChEMBL (Version-30) database and were also directly collected from PubMed literature. PubMed PMID was provided as the reference link for each activity record.

  Chemically structural similarity: I. Similar Active Natural Products in NPASS

Top-200 similar NPs were calculated against the active-NP-set (includes 4,3285 NPs with experimentally-derived bioactivity available in NPASS)

Similarity level is defined by Tanimoto coefficient (Tc) between two molecules. Tc lies between [0, 1] where '1' indicates the highest similarity. What is Tanimoto coefficient

●  The left chart: Distribution of similarity level between NPC5788 and all remaining natural products in the NPASS database.
●  The right table: Most similar natural products (Tc>=0.56 or Top200).

Similarity Score Similarity Level Natural Product ID

  Chemically structural similarity: II. Similar Clinical/Approved Drugs

Similarity level is defined by Tanimoto coefficient (Tc) between two molecules.

●  The left chart: Distribution of similarity level between NPC5788 and all drugs/candidates.
●  The right table: Most similar clinical/approved drugs (Tc>=0.56 or Top200).

Similarity Score Similarity Level Drug ID Developmental Stage

  Bioactivity similarity: Similar Natural Products in NPASS

Bioactivity similarity was calculated based on bioactivity descriptors of compounds. The bioactivity descriptors were calculated by a recently developed AI algorithm Chemical Checker (CC) [Nature Biotechnology, 38:1087–1096, 2020; Nature Communications, 12:3932, 2021], which evaluated bioactivity similarities at five levels:
A: chemistry similarity;
B: biological targets similarity;
C: networks similarity;
D: cell-based bioactivity similarity;
E: similarity based on clinical data.

Those 5 categories of CC bioactivity descriptors were calculated and then subjected to manifold projection using UMAP algorithm, to project all NPs on a 2-Dimensional space. The current NP was highlighted with a small circle in the 2-D map. Below figures: left-to-right, A-to-E.

A: chemistry similarity
B: biological targets similarity
C: networks similarity
D: cell-based bioactivity similarity
E: similarity based on clinical data